SlideShare ist ein Scribd-Unternehmen logo
1 von 75
Downloaden Sie, um offline zu lesen
IntRS’15 - September 2015, Vienna, Austria
Parsimonious and Adaptive Contextual
Information Acquisition in Recommender
Systems
Matthias Braunhofer1
, Ignacio Fernández-Tobías2
and Francesco Ricci1


1
Free University of Bozen - Bolzano

Piazza Domenicani 3, 39100 Bolzano, Italy

{mbraunhofer,fricci}@unibz.it
2
Universidad Autónoma de Madrid

C / Francisco Tomás y Valiente 11, 28049 Madrid, Spain

ignacio.fernandezt@uam.es
IntRS’15 - September 2015, Vienna, Austria
Outline
2
• Introduction
• Related Works
• Selective Context Acquisition
• Experimental Evaluation and Results
• Conclusions and Future Work
IntRS’15 - September 2015, Vienna, Austria
Outline
2
• Introduction
• Related Works
• Selective Context Acquisition
• Experimental Evaluation and Results
• Conclusions and
IntRS’15 - September 2015, Vienna, Austria
Context-Aware Recommender Systems
• Context-Aware Recommender Systems (CARSs) aim to provide better
recommendations by exploiting contextual information (e.g., weather)

• Rating prediction function is: R: Users x Items x Context → Ratings
3
3 ? 4
2 5 4
? 3 4
1 ? 1
2 5
? 3
3 ? 5
2 5
? 3
5 ? 5
4 5 4
? 3 5
IntRS’15 - September 2015, Vienna, Austria
Challenges for CARSs
4
• Identification of contextual factors that influence user preferences and the
decision making process, and hence are worth to be collected from the users
along with their ratings
• Development of a predictive model for predicting the user’s ratings for items
under various contextual situations
• Design of a human-computer interaction layer on top of the predictive model
IntRS’15 - September 2015, Vienna, Austria
Challenges for CARSs
4
• Identification of contextual factors that influence user preferences and the
decision making process, and hence are worth to be collected from the users
along with their ratings
• Development of a predictive model for predicting the user’s ratings for items
under various contextual situations
• Design of a human-computer interaction layer on top of the predictive model
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS (South Tyrol Suggests)
5
STS provides context-
aware suggestions for
Places Of Interest (POIs)
in South Tyrol, Italy
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/o Selective Context Acquisition
6
Don’t.
All contextual factors are
requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/ Selective Context Acquisition
7
Do.
Only relevant contextual
factors are requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/ Selective Context Acquisition
7
Do.
Only relevant contextual
factors are requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/ Selective Context Acquisition
7
Do.
Only relevant contextual
factors are requested.
IntRS’15 - September 2015, Vienna, Austria
Example
STS w/ Selective Context Acquisition
7
Do.
Only relevant contextual
factors are requested.
IntRS’15 - September 2015, Vienna, Austria
Outline
8
• Related Works
• Selective Context Acquisition
• Experimental Evaluation and Results
• Conclusions and Future Work
• Introduction
IntRS’15 - September 2015, Vienna, Austria
Context Selection
A Priori (i.e., Before Collecting Ratings)
• (Baltrunas et al., 2012): Development of a
web survey where users were requested to
evaluate the influence of contextual
conditions on POI categories

• This allowed to identify the relevant
contextual factors for different POI
categories (using mutual information
statistic)

• Pros: can acquire ratings under relevant
contextual conditions
• Cons: artificial setting; survey requires extra
effort from the user
9
IntRS’15 - September 2015, Vienna, Austria
Context Selection
A Posteriori (i.e., After Collecting Ratings)
• (Odić et al., 2013): Provision of several
statistic-based methods for detection of
relevant context, i.e., unalikeability,
entropy, sample variance, χ2
test,
Freeman–Halton test
• Results show a significant difference in
prediction of ratings in context detected as
relevant and the one detected as irrelevant

• Pros: can improve rating prediction
• Cons: still irrelevant context is acquired in
the rating acquisition phase
10
Relevant context Unclassified context
Irrelevant context Baseline predictors
IntRS’15 - September 2015, Vienna, Austria
Outline
11
• Related Works
• Selective Context Acquisition
• Experimental Evaluation and Results
• Conclusions and F
• Introduction
IntRS’15 - September 2015, Vienna, Austria
Parsimonious & Adaptive Context Acquisition
• Main idea: for each user-item pair (u, i), identify the contextual factors that
when acquired together with u’s rating for i improve most the overall system
• Heuristic: acquire the contextual factors that have the largest impact on
rating prediction

• Example:
12
(Alice, Skiing)
Season
Weather
Temperature
Daytime
Impact
0.000 0.125 0.250 0.375 0.500
IntRS’15 - September 2015, Vienna, Austria
Parsimonious & Adaptive Context Acquisition
• Main idea: for each user-item pair (u, i), identify the contextual factors that
when acquired together with u’s rating for i improve most the overall system
• Heuristic: acquire the contextual factors that have the largest impact on
rating prediction

• Example:
12
(Alice, Skiing)
Season
Weather
Temperature
Daytime
Impact
0.000 0.125 0.250 0.375 0.500
How to
quantify this
impact?
IntRS’15 - September 2015, Vienna, Austria
CARS Prediction Model
• We use a new variant of Context-Aware Matrix Factorization (CAMF)
(Baltrunas et al., 2011) that treats contextual conditions similarly to either item
or user attributes

• Advantage: allows to capture latent correlations and patterns between a
potentially wide range of knowledge sources ⟹ ideal to derive the usefulness
of contextual factors
13
ˆruic1,...,ck
= (qi + xa
a∈A(i)∪C(i)
∑ )T
⋅(pu + yb
b∈A(u)∪C(u)
∑ )+ ri + bu
qi 	 latent factor vector of item i

A(i)	 set of conventional item attributes (e.g., genre)

C(i)	 set of contextual item attributes (e.g., weather)

xa	 latent factor vector of item attribute a

pu	 latent factor vector of user u

A(u)	 set of conventional user attributes (e.g., age)

C(u)	 set of contextual user attributes (e.g., mood)

yb	 latent factor vector of user attribute b

ṝi	 average rating for item i

bu	 baseline for user u
IntRS’15 - September 2015, Vienna, Austria
Largest Deviation
• Computes a personalized relevance score for a contextual factor Cj and a
user-item pair (u, i)

• Given (u, i), it first measures the “impact” of each contextual condition cj ∈ Cj
by calculating the absolute deviation between the rating prediction when the
condition holds (i.e., ȓuicj) and the predicted context-free rating (i.e., ȓui): 

where fcj is the normalized frequency of cj 

• Finally, it takes the average of these individual scores for the contextual
conditions to yield a single relevance score for the contextual factor Cj
14
ˆwuicj
= fcj
ˆruicj
− ˆrui ,
IntRS’15 - September 2015, Vienna, Austria
Illustrative Example
• ȓAlice Skiing Sunny = 5
• ȓAlice Skiing = 3.5
• 20% of ratings are tagged with Sunny (i.e., fSunny = 0.2)

• ŵAlice Skiing Sunny = 0.2⋅|5 - 3.5| = 0.3
15
IntRS’15 - September 2015, Vienna, Austria
Outline
16
• Introduction
• Related Works
• Selective Context Acquisition
• Experimental Evaluation and Results
• Conclusions
IntRS’15 - September 2015, Vienna, Austria
CoMoDa TripAdvisor
Domain Movies POIs
Rating scale 1-5 1-5
Ratings 2,098 4,147
Users 112 3,916
Items 1,189 569
Contextual factors 12 3
Contextual conditions 49 31
User attributes 4 2
Item features 7 12
Datasets
17
IntRS’15 - September 2015, Vienna, Austria
CoMoDa TripAdvisor
Domain Movies POIs
Rating scale 1-5 1-5
Ratings 2,098 4,147
Users 112 3,916
Items 1,189 569
Contextual factors 12 3
Contextual conditions 49 31
User attributes 4 2
Item features 7 12
Datasets
17
time,
daytype, season,
location, weather,
social, mood, …
IntRS’15 - September 2015, Vienna, Austria
CoMoDa TripAdvisor
Domain Movies POIs
Rating scale 1-5 1-5
Ratings 2,098 4,147
Users 112 3,916
Items 1,189 569
Contextual factors 12 3
Contextual conditions 49 31
User attributes 4 2
Item features 7 12
Datasets
17
age, gender, city,
country
IntRS’15 - September 2015, Vienna, Austria
CoMoDa TripAdvisor
Domain Movies POIs
Rating scale 1-5 1-5
Ratings 2,098 4,147
Users 112 3,916
Items 1,189 569
Contextual factors 12 3
Contextual conditions 49 31
User attributes 4 2
Item features 7 12
Datasets
17
director, country,
language, year, budget,
genres, actors
IntRS’15 - September 2015, Vienna, Austria
CoMoDa TripAdvisor
Domain Movies POIs
Rating scale 1-5 1-5
Ratings 2,098 4,147
Users 112 3,916
Items 1,189 569
Contextual factors 12 3
Contextual conditions 49 31
User attributes 4 2
Item features 7 12
Datasets
17
type, month and year
of the trip
IntRS’15 - September 2015, Vienna, Austria
CoMoDa TripAdvisor
Domain Movies POIs
Rating scale 1-5 1-5
Ratings 2,098 4,147
Users 112 3,916
Items 1,189 569
Contextual factors 12 3
Contextual conditions 49 31
User attributes 4 2
Item features 7 12
Datasets
17
user location, member
type
IntRS’15 - September 2015, Vienna, Austria
CoMoDa TripAdvisor
Domain Movies POIs
Rating scale 1-5 1-5
Ratings 2,098 4,147
Users 112 3,916
Items 1,189 569
Contextual factors 12 3
Contextual conditions 49 31
User attributes 4 2
Item features 7 12
Datasets
17
item type,
amenities, item
locality, price range,
hotel class, …
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
• Repeated random sub-sampling validation (20 times):
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• Randomly partition the ratings into three subsets
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
• Measure user-averaged MAE (U-MAE), Precision@10 and Recall@10 on the testing
set, after training the prediction model on the new extended training set
IntRS’15 - September 2015, Vienna, Austria
Evaluation Procedure
Overview
18
25% 50% 25%
Training set Candidate set Testing set
• Repeated random sub-sampling validation (20 times):
• For each user-item pair (u,i) in the candidate set, compute the N most relevant
contextual factors and transfer the corresponding rating and context information ruic
in the candidate set to the training set as ruic' with c' ⊆ c containing the associated
contextual conditions for these factors
• Randomly partition the ratings into three subsets
• Measure user-averaged MAE (U-MAE), Precision@10 and Recall@10 on the testing
set, after training the prediction model on the new extended training set
• Repeat
IntRS’15 - September 2015, Vienna, Austria
user-item pair
top two contextual factors
rating transferred to training set
Evaluation Procedure
Example
19
+
+
=
rating in candidate set
IntRS’15 - September 2015, Vienna, Austria
(Alice, Skiing)
top two contextual factors
rating transferred to training set
Evaluation Procedure
Example
19
+
+
=
rating in candidate set
IntRS’15 - September 2015, Vienna, Austria
(Alice, Skiing)
Season and Weather
rating transferred to training set
Evaluation Procedure
Example
19
+
+
=
rating in candidate set
IntRS’15 - September 2015, Vienna, Austria
(Alice, Skiing)
Season and Weather
rating transferred to training set
Evaluation Procedure
Example
19
rAlice Skiing Winter, Sunny, Warm, Morning = 5+
+
=
IntRS’15 - September 2015, Vienna, Austria
(Alice, Skiing)
Season and Weather
Evaluation Procedure
Example
19
rAlice Skiing Winter, Sunny, Warm, Morning = 5
rAlice Skiing Winter, Sunny = 5
+
+
=
IntRS’15 - September 2015, Vienna, Austria
Baseline Methods for Evaluation
• Mutual Information (Baltrunas et al., 2012): given a user-item pair (u,i), it
computes the relevance score for the contextual factor Cj as the normalized
mutual information between the ratings for items belonging to i’s category
and Cj

• Freeman-Halton Test (Odić et al., 2013): calculates the relevance of a
contextual factor Cj using the Freeman-Halton test, which is the Fisher’s exact
test extended for contingency tables > 2 × 2

• Minimum Redundancy Maximum Relevance - mRMR (Peng et al., 2005):
ranks each contextual factor Cj according to its relevance to the rating
variable and redundancy to other contextual factors

• Random: randomly chooses the top N contextual factors for a user-item pair
20
IntRS’15 - September 2015, Vienna, Austria
Evaluation Results
U-MAE
21
CoMoDa
U-MAE
0.71
0.72
0.73
0.74
0.75
0.76
0.77
0.78
0.79
0.80
0.81
0.82
Number of Selected Contextual Factors
1 2 3 4
Largest Deviation Mutual Information Freeman-Halton mRMR Random All features
TripAdvisor
U-MAE
0.520
0.521
0.522
0.523
0.524
0.525
0.526
0.527
0.528
0.529
0.530
0.531
0.532
0.533
Number of Selected Contextual Factors
1 2 3
*
*
* * *
*
*
*
*
*
*
*
IntRS’15 - September 2015, Vienna, Austria
Evaluation Results
Precision@10
22
CoMoDa
Precision@10
0.0000
0.0002
0.0004
0.0006
0.0008
0.0010
0.0012
0.0014
0.0016
Number of Selected Contextual Factors
1 2 3 4
Largest Deviation Mutual Information Freeman-Halton mRMR Random All features
TripAdvisor
Precision@10
0.0100
0.0105
0.0110
0.0115
0.0120
0.0125
0.0130
0.0135
0.0140
0.0145
0.0150
0.0155
0.0160
Number of Selected Contextual Factors
1 2 3
*
*
*
*
*
* *
*
*
*
IntRS’15 - September 2015, Vienna, Austria
Evaluation Results
Recall@10
23
CoMoDa
Recall@10
0.000
0.002
0.004
0.006
0.008
0.010
0.012
0.014
0.016
Number of Selected Contextual Factors
1 2 3 4
Largest Deviation Mutual Information Freeman-Halton mRMR Random All features
TripAdvisor
Recall@10
0.100
0.105
0.110
0.115
0.120
0.125
0.130
0.135
0.140
0.145
0.150
0.155
0.160
Number of Selected Contextual Factors
1 2 3
*
*
*
*
* *
*
*
*
*
IntRS’15 - September 2015, Vienna, Austria
Evaluation Results
Practical Implications
• Using Largest Deviation, we know that we can ask only the contextual factors
C1, C2 and C3 when we ask user u to rate item i
24
IntRS’15 - September 2015, Vienna, Austria
Outline
25
• Introduction
• Related Works
• Selective Context Acquisition
• Experimental Evaluation and Results
• Conclusions and Future Work
IntRS’15 - September 2015, Vienna, Austria
Conclusions
• Identifying which contextual factors should be acquired from the user upon
rating an item is an important and practical problem for CARSs

• We tackled this problem with a new method that asks the user to specify
those contextual factors that if considered in the CARS prediction model
would produce a rating prediction that is most different from the context-free
prediction

• Results from our offline experiment confirm that the proposed parsimonious
context acquisition strategy elicits ratings with contextual information that
improve more the recommendation performance
26
IntRS’15 - September 2015, Vienna, Austria
Future Work
• Evaluate the performance of employing an Active Learning method for
adaptively selecting both the item to rate and the contextual information to
add

• Understand how the proposed method can be extended to generate requests
for contextual data that takes into account possible correlations between
contextual factors

• Update the evaluation procedure so that it can be used also on rating
datasets for which only a subset of contextual factors is known

• Integrate the developed method into our STS app and perform a live user
study
27
IntRS’15 - September 2015, Vienna, Austria
Questions?
Thank you.

Weitere ähnliche Inhalte

Was ist angesagt?

Alleviating cold-user start problem with users' social network data in recomm...
Alleviating cold-user start problem with users' social network data in recomm...Alleviating cold-user start problem with users' social network data in recomm...
Alleviating cold-user start problem with users' social network data in recomm...Eduardo Castillejo Gil
 
Tutorial: Context In Recommender Systems
Tutorial: Context In Recommender SystemsTutorial: Context In Recommender Systems
Tutorial: Context In Recommender SystemsYONG ZHENG
 
Context-Aware Recommender System Based on Boolean Matrix Factorisation
Context-Aware Recommender System Based on Boolean Matrix FactorisationContext-Aware Recommender System Based on Boolean Matrix Factorisation
Context-Aware Recommender System Based on Boolean Matrix FactorisationDmitrii Ignatov
 
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep LearningAnomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep LearningQuantUniversity
 
Outlier analysis for Temporal Datasets
Outlier analysis for Temporal DatasetsOutlier analysis for Temporal Datasets
Outlier analysis for Temporal DatasetsQuantUniversity
 
Anomaly detection Meetup Slides
Anomaly detection Meetup SlidesAnomaly detection Meetup Slides
Anomaly detection Meetup SlidesQuantUniversity
 
Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...
Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...
Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...Dr. Cornelius Ludmann
 
Anomaly detection : QuantUniversity Workshop
Anomaly detection : QuantUniversity Workshop Anomaly detection : QuantUniversity Workshop
Anomaly detection : QuantUniversity Workshop QuantUniversity
 
Scaling Analytics with Apache Spark
Scaling Analytics with Apache SparkScaling Analytics with Apache Spark
Scaling Analytics with Apache SparkQuantUniversity
 
Decision Support Analyss for Software Effort Estimation by Analogy
Decision Support Analyss for Software Effort Estimation by AnalogyDecision Support Analyss for Software Effort Estimation by Analogy
Decision Support Analyss for Software Effort Estimation by AnalogyTim Menzies
 
Instance Space Analysis for Search Based Software Engineering
Instance Space Analysis for Search Based Software EngineeringInstance Space Analysis for Search Based Software Engineering
Instance Space Analysis for Search Based Software EngineeringAldeida Aleti
 
Anomaly Detection
Anomaly DetectionAnomaly Detection
Anomaly Detectionguest0edcaf
 
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...Barbara Russo
 
A Top-N Recommender System Evaluation Protocol Inspired by Deployed Systems
A Top-N Recommender System Evaluation Protocol Inspired by Deployed SystemsA Top-N Recommender System Evaluation Protocol Inspired by Deployed Systems
A Top-N Recommender System Evaluation Protocol Inspired by Deployed SystemsAlan Said
 
130321 zephyrin soh - on the effect of exploration strategies on maintenanc...
130321   zephyrin soh - on the effect of exploration strategies on maintenanc...130321   zephyrin soh - on the effect of exploration strategies on maintenanc...
130321 zephyrin soh - on the effect of exploration strategies on maintenanc...Ptidej Team
 
GTC 2021: Counterfactual Learning to Rank in E-commerce
GTC 2021: Counterfactual Learning to Rank in E-commerceGTC 2021: Counterfactual Learning to Rank in E-commerce
GTC 2021: Counterfactual Learning to Rank in E-commerceGrubhubTech
 
Experiments on Design Pattern Discovery
Experiments on Design Pattern DiscoveryExperiments on Design Pattern Discovery
Experiments on Design Pattern DiscoveryTim Menzies
 
A Content Boosted Hybrid Recommendation System
A Content Boosted Hybrid Recommendation SystemA Content Boosted Hybrid Recommendation System
A Content Boosted Hybrid Recommendation SystemSeval Çapraz
 

Was ist angesagt? (20)

Alleviating cold-user start problem with users' social network data in recomm...
Alleviating cold-user start problem with users' social network data in recomm...Alleviating cold-user start problem with users' social network data in recomm...
Alleviating cold-user start problem with users' social network data in recomm...
 
Tutorial: Context In Recommender Systems
Tutorial: Context In Recommender SystemsTutorial: Context In Recommender Systems
Tutorial: Context In Recommender Systems
 
Context-Aware Recommender System Based on Boolean Matrix Factorisation
Context-Aware Recommender System Based on Boolean Matrix FactorisationContext-Aware Recommender System Based on Boolean Matrix Factorisation
Context-Aware Recommender System Based on Boolean Matrix Factorisation
 
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep LearningAnomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
 
Outlier analysis for Temporal Datasets
Outlier analysis for Temporal DatasetsOutlier analysis for Temporal Datasets
Outlier analysis for Temporal Datasets
 
Anomaly detection Meetup Slides
Anomaly detection Meetup SlidesAnomaly detection Meetup Slides
Anomaly detection Meetup Slides
 
Anomaly detection
Anomaly detectionAnomaly detection
Anomaly detection
 
Machine learning meetup
Machine learning meetupMachine learning meetup
Machine learning meetup
 
Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...
Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...
Continuous Evaluation of Collaborative Recommender Systems in Data Stream Man...
 
Anomaly detection : QuantUniversity Workshop
Anomaly detection : QuantUniversity Workshop Anomaly detection : QuantUniversity Workshop
Anomaly detection : QuantUniversity Workshop
 
Scaling Analytics with Apache Spark
Scaling Analytics with Apache SparkScaling Analytics with Apache Spark
Scaling Analytics with Apache Spark
 
Decision Support Analyss for Software Effort Estimation by Analogy
Decision Support Analyss for Software Effort Estimation by AnalogyDecision Support Analyss for Software Effort Estimation by Analogy
Decision Support Analyss for Software Effort Estimation by Analogy
 
Instance Space Analysis for Search Based Software Engineering
Instance Space Analysis for Search Based Software EngineeringInstance Space Analysis for Search Based Software Engineering
Instance Space Analysis for Search Based Software Engineering
 
Anomaly Detection
Anomaly DetectionAnomaly Detection
Anomaly Detection
 
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
 
A Top-N Recommender System Evaluation Protocol Inspired by Deployed Systems
A Top-N Recommender System Evaluation Protocol Inspired by Deployed SystemsA Top-N Recommender System Evaluation Protocol Inspired by Deployed Systems
A Top-N Recommender System Evaluation Protocol Inspired by Deployed Systems
 
130321 zephyrin soh - on the effect of exploration strategies on maintenanc...
130321   zephyrin soh - on the effect of exploration strategies on maintenanc...130321   zephyrin soh - on the effect of exploration strategies on maintenanc...
130321 zephyrin soh - on the effect of exploration strategies on maintenanc...
 
GTC 2021: Counterfactual Learning to Rank in E-commerce
GTC 2021: Counterfactual Learning to Rank in E-commerceGTC 2021: Counterfactual Learning to Rank in E-commerce
GTC 2021: Counterfactual Learning to Rank in E-commerce
 
Experiments on Design Pattern Discovery
Experiments on Design Pattern DiscoveryExperiments on Design Pattern Discovery
Experiments on Design Pattern Discovery
 
A Content Boosted Hybrid Recommendation System
A Content Boosted Hybrid Recommendation SystemA Content Boosted Hybrid Recommendation System
A Content Boosted Hybrid Recommendation System
 

Ähnlich wie Parsimonious and Adaptive Contextual Information Acquisition in Recommender Systems

Contextual Information Elicitation in Travel Recommender Systems
Contextual Information Elicitation in Travel Recommender SystemsContextual Information Elicitation in Travel Recommender Systems
Contextual Information Elicitation in Travel Recommender SystemsMatthias Braunhofer
 
Estimation of parameters.pptxxxxxxxxxxxx
Estimation of parameters.pptxxxxxxxxxxxxEstimation of parameters.pptxxxxxxxxxxxx
Estimation of parameters.pptxxxxxxxxxxxxAliceRivera13
 
CABT SHS Statistics & Probability - Estimation of Parameters (intro)
CABT SHS Statistics & Probability -  Estimation of Parameters (intro)CABT SHS Statistics & Probability -  Estimation of Parameters (intro)
CABT SHS Statistics & Probability - Estimation of Parameters (intro)Gilbert Joseph Abueg
 
An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...Paolo Tomeo
 
Terry Johns: Uncertainty - understanding the impact and the importance of rec...
Terry Johns: Uncertainty - understanding the impact and the importance of rec...Terry Johns: Uncertainty - understanding the impact and the importance of rec...
Terry Johns: Uncertainty - understanding the impact and the importance of rec...Association for Project Management
 
Aleksandar Kapisoda: The semantic approach for tracking scientific publications
Aleksandar Kapisoda: The semantic approach for tracking scientific publicationsAleksandar Kapisoda: The semantic approach for tracking scientific publications
Aleksandar Kapisoda: The semantic approach for tracking scientific publicationsSemantic Web Company
 
Intro to R and Data Mining 2012 09 27
Intro to R and Data Mining 2012 09 27Intro to R and Data Mining 2012 09 27
Intro to R and Data Mining 2012 09 27Raj Kasarabada
 
Combining analytics and user research
Combining analytics and user researchCombining analytics and user research
Combining analytics and user researchAlex Tarling
 
Representative Of The Populationseek Your Dream/Tutorialoutletdotcom
Representative Of The Populationseek Your Dream/TutorialoutletdotcomRepresentative Of The Populationseek Your Dream/Tutorialoutletdotcom
Representative Of The Populationseek Your Dream/Tutorialoutletdotcomapjk512
 
2015: Distance based classifiers: Basic concepts, recent developments and app...
2015: Distance based classifiers: Basic concepts, recent developments and app...2015: Distance based classifiers: Basic concepts, recent developments and app...
2015: Distance based classifiers: Basic concepts, recent developments and app...University of Groningen
 
ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...
ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...
ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...Stefan Bischof
 
A proposal for the inclusion of accessibility criteria in the publishing work...
A proposal for the inclusion of accessibility criteria in the publishing work...A proposal for the inclusion of accessibility criteria in the publishing work...
A proposal for the inclusion of accessibility criteria in the publishing work...adaptabit
 
Early Analysis and Debuggin of Linked Open Data Cubes
Early Analysis and Debuggin of Linked Open Data CubesEarly Analysis and Debuggin of Linked Open Data Cubes
Early Analysis and Debuggin of Linked Open Data CubesEnrico Daga
 
Scott maclean advanced quant - 2011
Scott maclean   advanced quant - 2011Scott maclean   advanced quant - 2011
Scott maclean advanced quant - 2011Ray Poynter
 

Ähnlich wie Parsimonious and Adaptive Contextual Information Acquisition in Recommender Systems (20)

Analyzing User Reviews in Tourism with Topic Models
Analyzing User Reviews in Tourism with Topic ModelsAnalyzing User Reviews in Tourism with Topic Models
Analyzing User Reviews in Tourism with Topic Models
 
Contextual Information Elicitation in Travel Recommender Systems
Contextual Information Elicitation in Travel Recommender SystemsContextual Information Elicitation in Travel Recommender Systems
Contextual Information Elicitation in Travel Recommender Systems
 
Contextual information elicitation in travel recommender systems
Contextual information elicitation in travel recommender systemsContextual information elicitation in travel recommender systems
Contextual information elicitation in travel recommender systems
 
Estimation of parameters.pptxxxxxxxxxxxx
Estimation of parameters.pptxxxxxxxxxxxxEstimation of parameters.pptxxxxxxxxxxxx
Estimation of parameters.pptxxxxxxxxxxxx
 
CABT SHS Statistics & Probability - Estimation of Parameters (intro)
CABT SHS Statistics & Probability -  Estimation of Parameters (intro)CABT SHS Statistics & Probability -  Estimation of Parameters (intro)
CABT SHS Statistics & Probability - Estimation of Parameters (intro)
 
An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...
 
User Personality and the New User Problem in a Context-­‐Aware POI Recommende...
User Personality and the New User Problem in a Context-­‐Aware POI Recommende...User Personality and the New User Problem in a Context-­‐Aware POI Recommende...
User Personality and the New User Problem in a Context-­‐Aware POI Recommende...
 
Terry Johns: Uncertainty - understanding the impact and the importance of rec...
Terry Johns: Uncertainty - understanding the impact and the importance of rec...Terry Johns: Uncertainty - understanding the impact and the importance of rec...
Terry Johns: Uncertainty - understanding the impact and the importance of rec...
 
Aleksandar Kapisoda: The semantic approach for tracking scientific publications
Aleksandar Kapisoda: The semantic approach for tracking scientific publicationsAleksandar Kapisoda: The semantic approach for tracking scientific publications
Aleksandar Kapisoda: The semantic approach for tracking scientific publications
 
Intro to R and Data Mining 2012 09 27
Intro to R and Data Mining 2012 09 27Intro to R and Data Mining 2012 09 27
Intro to R and Data Mining 2012 09 27
 
Week_2_Lecture.pdf
Week_2_Lecture.pdfWeek_2_Lecture.pdf
Week_2_Lecture.pdf
 
Combining analytics and user research
Combining analytics and user researchCombining analytics and user research
Combining analytics and user research
 
Representative Of The Populationseek Your Dream/Tutorialoutletdotcom
Representative Of The Populationseek Your Dream/TutorialoutletdotcomRepresentative Of The Populationseek Your Dream/Tutorialoutletdotcom
Representative Of The Populationseek Your Dream/Tutorialoutletdotcom
 
What is the multidimensional poverty assessment tool
What is the multidimensional poverty assessment toolWhat is the multidimensional poverty assessment tool
What is the multidimensional poverty assessment tool
 
2015: Distance based classifiers: Basic concepts, recent developments and app...
2015: Distance based classifiers: Basic concepts, recent developments and app...2015: Distance based classifiers: Basic concepts, recent developments and app...
2015: Distance based classifiers: Basic concepts, recent developments and app...
 
ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...
ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...
ISWC 2015 - Collecting, integrating, enriching and republishing open city dat...
 
A proposal for the inclusion of accessibility criteria in the publishing work...
A proposal for the inclusion of accessibility criteria in the publishing work...A proposal for the inclusion of accessibility criteria in the publishing work...
A proposal for the inclusion of accessibility criteria in the publishing work...
 
Andrea Dal Pozzolo's CV
Andrea Dal Pozzolo's CVAndrea Dal Pozzolo's CV
Andrea Dal Pozzolo's CV
 
Early Analysis and Debuggin of Linked Open Data Cubes
Early Analysis and Debuggin of Linked Open Data CubesEarly Analysis and Debuggin of Linked Open Data Cubes
Early Analysis and Debuggin of Linked Open Data Cubes
 
Scott maclean advanced quant - 2011
Scott maclean   advanced quant - 2011Scott maclean   advanced quant - 2011
Scott maclean advanced quant - 2011
 

Kürzlich hochgeladen

一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样
一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样
一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样Fi
 
一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样
一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样
一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样AS
 
Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...
Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...
Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...mikehavy0
 
一比一原版英国创意艺术大学毕业证如何办理
一比一原版英国创意艺术大学毕业证如何办理一比一原版英国创意艺术大学毕业证如何办理
一比一原版英国创意艺术大学毕业证如何办理AS
 
如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证
如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证
如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证hfkmxufye
 
The Rise of Subscription-Based Digital Services.pdf
The Rise of Subscription-Based Digital Services.pdfThe Rise of Subscription-Based Digital Services.pdf
The Rise of Subscription-Based Digital Services.pdfe-Market Hub
 
APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0
APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0
APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0APNIC
 
TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.
TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.
TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.Tortogel
 
一比一原版澳大利亚迪肯大学毕业证如何办理
一比一原版澳大利亚迪肯大学毕业证如何办理一比一原版澳大利亚迪肯大学毕业证如何办理
一比一原版澳大利亚迪肯大学毕业证如何办理SS
 
Free scottie t shirts Free scottie t shirts
Free scottie t shirts Free scottie t shirtsFree scottie t shirts Free scottie t shirts
Free scottie t shirts Free scottie t shirtsrahman018755
 
Thank You Luv I’ll Never Walk Alone Again T shirts
Thank You Luv I’ll Never Walk Alone Again T shirtsThank You Luv I’ll Never Walk Alone Again T shirts
Thank You Luv I’ll Never Walk Alone Again T shirtsrahman018755
 
HUMANIZE YOUR BRAND - FREE E-WORKBOOK Download Now
HUMANIZE YOUR BRAND - FREE E-WORKBOOK Download NowHUMANIZE YOUR BRAND - FREE E-WORKBOOK Download Now
HUMANIZE YOUR BRAND - FREE E-WORKBOOK Download NowIdeoholics
 
Lowongan Kerja LC Yogyakarta Terbaru 085746015303
Lowongan Kerja LC Yogyakarta Terbaru 085746015303Lowongan Kerja LC Yogyakarta Terbaru 085746015303
Lowongan Kerja LC Yogyakarta Terbaru 085746015303Dewi Agency
 
原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样
原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样
原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样asdafd
 
APNIC Updates presented by Paul Wilson at CaribNOG 27
APNIC Updates presented by Paul Wilson at  CaribNOG 27APNIC Updates presented by Paul Wilson at  CaribNOG 27
APNIC Updates presented by Paul Wilson at CaribNOG 27APNIC
 
Beyond Inbound: Unlocking the Secrets of API Egress Traffic Management
Beyond Inbound: Unlocking the Secrets of API Egress Traffic ManagementBeyond Inbound: Unlocking the Secrets of API Egress Traffic Management
Beyond Inbound: Unlocking the Secrets of API Egress Traffic Managementseank14
 
一比一定制波士顿学院毕业证学位证书
一比一定制波士顿学院毕业证学位证书一比一定制波士顿学院毕业证学位证书
一比一定制波士顿学院毕业证学位证书A
 
一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样
一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样
一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样AS
 
Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...
Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...
Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...Varun Mithran
 
一比一定制(USC毕业证书)美国南加州大学毕业证学位证书
一比一定制(USC毕业证书)美国南加州大学毕业证学位证书一比一定制(USC毕业证书)美国南加州大学毕业证学位证书
一比一定制(USC毕业证书)美国南加州大学毕业证学位证书Fir
 

Kürzlich hochgeladen (20)

一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样
一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样
一比一原版(UWE毕业证书)西英格兰大学毕业证原件一模一样
 
一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样
一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样
一比一原版(Polytechnic毕业证书)新加坡理工学院毕业证原件一模一样
 
Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...
Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...
Abortion Clinic in Kwa thema +27791653574 Kwa thema WhatsApp Abortion Clinic ...
 
一比一原版英国创意艺术大学毕业证如何办理
一比一原版英国创意艺术大学毕业证如何办理一比一原版英国创意艺术大学毕业证如何办理
一比一原版英国创意艺术大学毕业证如何办理
 
如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证
如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证
如何办理(UCLA毕业证)加州大学洛杉矶分校毕业证成绩单本科硕士学位证留信学历认证
 
The Rise of Subscription-Based Digital Services.pdf
The Rise of Subscription-Based Digital Services.pdfThe Rise of Subscription-Based Digital Services.pdf
The Rise of Subscription-Based Digital Services.pdf
 
APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0
APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0
APNIC Policy Roundup presented by Sunny Chendi at TWNOG 5.0
 
TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.
TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.
TORTOGEL TELAH MENJADI SALAH SATU PLATFORM PERMAINAN PALING FAVORIT.
 
一比一原版澳大利亚迪肯大学毕业证如何办理
一比一原版澳大利亚迪肯大学毕业证如何办理一比一原版澳大利亚迪肯大学毕业证如何办理
一比一原版澳大利亚迪肯大学毕业证如何办理
 
Free scottie t shirts Free scottie t shirts
Free scottie t shirts Free scottie t shirtsFree scottie t shirts Free scottie t shirts
Free scottie t shirts Free scottie t shirts
 
Thank You Luv I’ll Never Walk Alone Again T shirts
Thank You Luv I’ll Never Walk Alone Again T shirtsThank You Luv I’ll Never Walk Alone Again T shirts
Thank You Luv I’ll Never Walk Alone Again T shirts
 
HUMANIZE YOUR BRAND - FREE E-WORKBOOK Download Now
HUMANIZE YOUR BRAND - FREE E-WORKBOOK Download NowHUMANIZE YOUR BRAND - FREE E-WORKBOOK Download Now
HUMANIZE YOUR BRAND - FREE E-WORKBOOK Download Now
 
Lowongan Kerja LC Yogyakarta Terbaru 085746015303
Lowongan Kerja LC Yogyakarta Terbaru 085746015303Lowongan Kerja LC Yogyakarta Terbaru 085746015303
Lowongan Kerja LC Yogyakarta Terbaru 085746015303
 
原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样
原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样
原版定制(Management毕业证书)新加坡管理大学毕业证原件一模一样
 
APNIC Updates presented by Paul Wilson at CaribNOG 27
APNIC Updates presented by Paul Wilson at  CaribNOG 27APNIC Updates presented by Paul Wilson at  CaribNOG 27
APNIC Updates presented by Paul Wilson at CaribNOG 27
 
Beyond Inbound: Unlocking the Secrets of API Egress Traffic Management
Beyond Inbound: Unlocking the Secrets of API Egress Traffic ManagementBeyond Inbound: Unlocking the Secrets of API Egress Traffic Management
Beyond Inbound: Unlocking the Secrets of API Egress Traffic Management
 
一比一定制波士顿学院毕业证学位证书
一比一定制波士顿学院毕业证学位证书一比一定制波士顿学院毕业证学位证书
一比一定制波士顿学院毕业证学位证书
 
一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样
一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样
一比一原版(Design毕业证书)新加坡科技设计大学毕业证原件一模一样
 
Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...
Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...
Subdomain enumeration is a crucial phase in cybersecurity, particularly durin...
 
一比一定制(USC毕业证书)美国南加州大学毕业证学位证书
一比一定制(USC毕业证书)美国南加州大学毕业证学位证书一比一定制(USC毕业证书)美国南加州大学毕业证学位证书
一比一定制(USC毕业证书)美国南加州大学毕业证学位证书
 

Parsimonious and Adaptive Contextual Information Acquisition in Recommender Systems

  • 1. IntRS’15 - September 2015, Vienna, Austria Parsimonious and Adaptive Contextual Information Acquisition in Recommender Systems Matthias Braunhofer1 , Ignacio Fernández-Tobías2 and Francesco Ricci1 1 Free University of Bozen - Bolzano Piazza Domenicani 3, 39100 Bolzano, Italy {mbraunhofer,fricci}@unibz.it 2 Universidad Autónoma de Madrid C / Francisco Tomás y Valiente 11, 28049 Madrid, Spain ignacio.fernandezt@uam.es
  • 2. IntRS’15 - September 2015, Vienna, Austria Outline 2 • Introduction • Related Works • Selective Context Acquisition • Experimental Evaluation and Results • Conclusions and Future Work
  • 3. IntRS’15 - September 2015, Vienna, Austria Outline 2 • Introduction • Related Works • Selective Context Acquisition • Experimental Evaluation and Results • Conclusions and
  • 4. IntRS’15 - September 2015, Vienna, Austria Context-Aware Recommender Systems • Context-Aware Recommender Systems (CARSs) aim to provide better recommendations by exploiting contextual information (e.g., weather) • Rating prediction function is: R: Users x Items x Context → Ratings 3 3 ? 4 2 5 4 ? 3 4 1 ? 1 2 5 ? 3 3 ? 5 2 5 ? 3 5 ? 5 4 5 4 ? 3 5
  • 5. IntRS’15 - September 2015, Vienna, Austria Challenges for CARSs 4 • Identification of contextual factors that influence user preferences and the decision making process, and hence are worth to be collected from the users along with their ratings • Development of a predictive model for predicting the user’s ratings for items under various contextual situations • Design of a human-computer interaction layer on top of the predictive model
  • 6. IntRS’15 - September 2015, Vienna, Austria Challenges for CARSs 4 • Identification of contextual factors that influence user preferences and the decision making process, and hence are worth to be collected from the users along with their ratings • Development of a predictive model for predicting the user’s ratings for items under various contextual situations • Design of a human-computer interaction layer on top of the predictive model
  • 7. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 8. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 9. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 10. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 11. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 12. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 13. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 14. IntRS’15 - September 2015, Vienna, Austria Example STS (South Tyrol Suggests) 5 STS provides context- aware suggestions for Places Of Interest (POIs) in South Tyrol, Italy
  • 15. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 16. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 17. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 18. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 19. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 20. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 21. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 22. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 23. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 24. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 25. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 26. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 27. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 28. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 29. IntRS’15 - September 2015, Vienna, Austria Example STS w/o Selective Context Acquisition 6 Don’t. All contextual factors are requested.
  • 30. IntRS’15 - September 2015, Vienna, Austria Example STS w/ Selective Context Acquisition 7 Do. Only relevant contextual factors are requested.
  • 31. IntRS’15 - September 2015, Vienna, Austria Example STS w/ Selective Context Acquisition 7 Do. Only relevant contextual factors are requested.
  • 32. IntRS’15 - September 2015, Vienna, Austria Example STS w/ Selective Context Acquisition 7 Do. Only relevant contextual factors are requested.
  • 33. IntRS’15 - September 2015, Vienna, Austria Example STS w/ Selective Context Acquisition 7 Do. Only relevant contextual factors are requested.
  • 34. IntRS’15 - September 2015, Vienna, Austria Outline 8 • Related Works • Selective Context Acquisition • Experimental Evaluation and Results • Conclusions and Future Work • Introduction
  • 35. IntRS’15 - September 2015, Vienna, Austria Context Selection A Priori (i.e., Before Collecting Ratings) • (Baltrunas et al., 2012): Development of a web survey where users were requested to evaluate the influence of contextual conditions on POI categories • This allowed to identify the relevant contextual factors for different POI categories (using mutual information statistic) • Pros: can acquire ratings under relevant contextual conditions • Cons: artificial setting; survey requires extra effort from the user 9
  • 36. IntRS’15 - September 2015, Vienna, Austria Context Selection A Posteriori (i.e., After Collecting Ratings) • (Odić et al., 2013): Provision of several statistic-based methods for detection of relevant context, i.e., unalikeability, entropy, sample variance, χ2 test, Freeman–Halton test • Results show a significant difference in prediction of ratings in context detected as relevant and the one detected as irrelevant • Pros: can improve rating prediction • Cons: still irrelevant context is acquired in the rating acquisition phase 10 Relevant context Unclassified context Irrelevant context Baseline predictors
  • 37. IntRS’15 - September 2015, Vienna, Austria Outline 11 • Related Works • Selective Context Acquisition • Experimental Evaluation and Results • Conclusions and F • Introduction
  • 38. IntRS’15 - September 2015, Vienna, Austria Parsimonious & Adaptive Context Acquisition • Main idea: for each user-item pair (u, i), identify the contextual factors that when acquired together with u’s rating for i improve most the overall system • Heuristic: acquire the contextual factors that have the largest impact on rating prediction • Example: 12 (Alice, Skiing) Season Weather Temperature Daytime Impact 0.000 0.125 0.250 0.375 0.500
  • 39. IntRS’15 - September 2015, Vienna, Austria Parsimonious & Adaptive Context Acquisition • Main idea: for each user-item pair (u, i), identify the contextual factors that when acquired together with u’s rating for i improve most the overall system • Heuristic: acquire the contextual factors that have the largest impact on rating prediction • Example: 12 (Alice, Skiing) Season Weather Temperature Daytime Impact 0.000 0.125 0.250 0.375 0.500 How to quantify this impact?
  • 40. IntRS’15 - September 2015, Vienna, Austria CARS Prediction Model • We use a new variant of Context-Aware Matrix Factorization (CAMF) (Baltrunas et al., 2011) that treats contextual conditions similarly to either item or user attributes • Advantage: allows to capture latent correlations and patterns between a potentially wide range of knowledge sources ⟹ ideal to derive the usefulness of contextual factors 13 ˆruic1,...,ck = (qi + xa a∈A(i)∪C(i) ∑ )T ⋅(pu + yb b∈A(u)∪C(u) ∑ )+ ri + bu qi latent factor vector of item i A(i) set of conventional item attributes (e.g., genre) C(i) set of contextual item attributes (e.g., weather) xa latent factor vector of item attribute a pu latent factor vector of user u A(u) set of conventional user attributes (e.g., age) C(u) set of contextual user attributes (e.g., mood) yb latent factor vector of user attribute b ṝi average rating for item i bu baseline for user u
  • 41. IntRS’15 - September 2015, Vienna, Austria Largest Deviation • Computes a personalized relevance score for a contextual factor Cj and a user-item pair (u, i) • Given (u, i), it first measures the “impact” of each contextual condition cj ∈ Cj by calculating the absolute deviation between the rating prediction when the condition holds (i.e., ȓuicj) and the predicted context-free rating (i.e., ȓui): where fcj is the normalized frequency of cj • Finally, it takes the average of these individual scores for the contextual conditions to yield a single relevance score for the contextual factor Cj 14 ˆwuicj = fcj ˆruicj − ˆrui ,
  • 42. IntRS’15 - September 2015, Vienna, Austria Illustrative Example • ȓAlice Skiing Sunny = 5 • ȓAlice Skiing = 3.5 • 20% of ratings are tagged with Sunny (i.e., fSunny = 0.2) • ŵAlice Skiing Sunny = 0.2⋅|5 - 3.5| = 0.3 15
  • 43. IntRS’15 - September 2015, Vienna, Austria Outline 16 • Introduction • Related Works • Selective Context Acquisition • Experimental Evaluation and Results • Conclusions
  • 44. IntRS’15 - September 2015, Vienna, Austria CoMoDa TripAdvisor Domain Movies POIs Rating scale 1-5 1-5 Ratings 2,098 4,147 Users 112 3,916 Items 1,189 569 Contextual factors 12 3 Contextual conditions 49 31 User attributes 4 2 Item features 7 12 Datasets 17
  • 45. IntRS’15 - September 2015, Vienna, Austria CoMoDa TripAdvisor Domain Movies POIs Rating scale 1-5 1-5 Ratings 2,098 4,147 Users 112 3,916 Items 1,189 569 Contextual factors 12 3 Contextual conditions 49 31 User attributes 4 2 Item features 7 12 Datasets 17 time, daytype, season, location, weather, social, mood, …
  • 46. IntRS’15 - September 2015, Vienna, Austria CoMoDa TripAdvisor Domain Movies POIs Rating scale 1-5 1-5 Ratings 2,098 4,147 Users 112 3,916 Items 1,189 569 Contextual factors 12 3 Contextual conditions 49 31 User attributes 4 2 Item features 7 12 Datasets 17 age, gender, city, country
  • 47. IntRS’15 - September 2015, Vienna, Austria CoMoDa TripAdvisor Domain Movies POIs Rating scale 1-5 1-5 Ratings 2,098 4,147 Users 112 3,916 Items 1,189 569 Contextual factors 12 3 Contextual conditions 49 31 User attributes 4 2 Item features 7 12 Datasets 17 director, country, language, year, budget, genres, actors
  • 48. IntRS’15 - September 2015, Vienna, Austria CoMoDa TripAdvisor Domain Movies POIs Rating scale 1-5 1-5 Ratings 2,098 4,147 Users 112 3,916 Items 1,189 569 Contextual factors 12 3 Contextual conditions 49 31 User attributes 4 2 Item features 7 12 Datasets 17 type, month and year of the trip
  • 49. IntRS’15 - September 2015, Vienna, Austria CoMoDa TripAdvisor Domain Movies POIs Rating scale 1-5 1-5 Ratings 2,098 4,147 Users 112 3,916 Items 1,189 569 Contextual factors 12 3 Contextual conditions 49 31 User attributes 4 2 Item features 7 12 Datasets 17 user location, member type
  • 50. IntRS’15 - September 2015, Vienna, Austria CoMoDa TripAdvisor Domain Movies POIs Rating scale 1-5 1-5 Ratings 2,098 4,147 Users 112 3,916 Items 1,189 569 Contextual factors 12 3 Contextual conditions 49 31 User attributes 4 2 Item features 7 12 Datasets 17 item type, amenities, item locality, price range, hotel class, …
  • 51. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18
  • 52. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 • Repeated random sub-sampling validation (20 times):
  • 53. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • Randomly partition the ratings into three subsets
  • 54. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets
  • 55. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets
  • 56. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets
  • 57. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets
  • 58. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets
  • 59. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets
  • 60. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets • Measure user-averaged MAE (U-MAE), Precision@10 and Recall@10 on the testing set, after training the prediction model on the new extended training set
  • 61. IntRS’15 - September 2015, Vienna, Austria Evaluation Procedure Overview 18 25% 50% 25% Training set Candidate set Testing set • Repeated random sub-sampling validation (20 times): • For each user-item pair (u,i) in the candidate set, compute the N most relevant contextual factors and transfer the corresponding rating and context information ruic in the candidate set to the training set as ruic' with c' ⊆ c containing the associated contextual conditions for these factors • Randomly partition the ratings into three subsets • Measure user-averaged MAE (U-MAE), Precision@10 and Recall@10 on the testing set, after training the prediction model on the new extended training set • Repeat
  • 62. IntRS’15 - September 2015, Vienna, Austria user-item pair top two contextual factors rating transferred to training set Evaluation Procedure Example 19 + + = rating in candidate set
  • 63. IntRS’15 - September 2015, Vienna, Austria (Alice, Skiing) top two contextual factors rating transferred to training set Evaluation Procedure Example 19 + + = rating in candidate set
  • 64. IntRS’15 - September 2015, Vienna, Austria (Alice, Skiing) Season and Weather rating transferred to training set Evaluation Procedure Example 19 + + = rating in candidate set
  • 65. IntRS’15 - September 2015, Vienna, Austria (Alice, Skiing) Season and Weather rating transferred to training set Evaluation Procedure Example 19 rAlice Skiing Winter, Sunny, Warm, Morning = 5+ + =
  • 66. IntRS’15 - September 2015, Vienna, Austria (Alice, Skiing) Season and Weather Evaluation Procedure Example 19 rAlice Skiing Winter, Sunny, Warm, Morning = 5 rAlice Skiing Winter, Sunny = 5 + + =
  • 67. IntRS’15 - September 2015, Vienna, Austria Baseline Methods for Evaluation • Mutual Information (Baltrunas et al., 2012): given a user-item pair (u,i), it computes the relevance score for the contextual factor Cj as the normalized mutual information between the ratings for items belonging to i’s category and Cj • Freeman-Halton Test (Odić et al., 2013): calculates the relevance of a contextual factor Cj using the Freeman-Halton test, which is the Fisher’s exact test extended for contingency tables > 2 × 2 • Minimum Redundancy Maximum Relevance - mRMR (Peng et al., 2005): ranks each contextual factor Cj according to its relevance to the rating variable and redundancy to other contextual factors • Random: randomly chooses the top N contextual factors for a user-item pair 20
  • 68. IntRS’15 - September 2015, Vienna, Austria Evaluation Results U-MAE 21 CoMoDa U-MAE 0.71 0.72 0.73 0.74 0.75 0.76 0.77 0.78 0.79 0.80 0.81 0.82 Number of Selected Contextual Factors 1 2 3 4 Largest Deviation Mutual Information Freeman-Halton mRMR Random All features TripAdvisor U-MAE 0.520 0.521 0.522 0.523 0.524 0.525 0.526 0.527 0.528 0.529 0.530 0.531 0.532 0.533 Number of Selected Contextual Factors 1 2 3 * * * * * * * * * * * *
  • 69. IntRS’15 - September 2015, Vienna, Austria Evaluation Results Precision@10 22 CoMoDa Precision@10 0.0000 0.0002 0.0004 0.0006 0.0008 0.0010 0.0012 0.0014 0.0016 Number of Selected Contextual Factors 1 2 3 4 Largest Deviation Mutual Information Freeman-Halton mRMR Random All features TripAdvisor Precision@10 0.0100 0.0105 0.0110 0.0115 0.0120 0.0125 0.0130 0.0135 0.0140 0.0145 0.0150 0.0155 0.0160 Number of Selected Contextual Factors 1 2 3 * * * * * * * * * *
  • 70. IntRS’15 - September 2015, Vienna, Austria Evaluation Results Recall@10 23 CoMoDa Recall@10 0.000 0.002 0.004 0.006 0.008 0.010 0.012 0.014 0.016 Number of Selected Contextual Factors 1 2 3 4 Largest Deviation Mutual Information Freeman-Halton mRMR Random All features TripAdvisor Recall@10 0.100 0.105 0.110 0.115 0.120 0.125 0.130 0.135 0.140 0.145 0.150 0.155 0.160 Number of Selected Contextual Factors 1 2 3 * * * * * * * * * *
  • 71. IntRS’15 - September 2015, Vienna, Austria Evaluation Results Practical Implications • Using Largest Deviation, we know that we can ask only the contextual factors C1, C2 and C3 when we ask user u to rate item i 24
  • 72. IntRS’15 - September 2015, Vienna, Austria Outline 25 • Introduction • Related Works • Selective Context Acquisition • Experimental Evaluation and Results • Conclusions and Future Work
  • 73. IntRS’15 - September 2015, Vienna, Austria Conclusions • Identifying which contextual factors should be acquired from the user upon rating an item is an important and practical problem for CARSs • We tackled this problem with a new method that asks the user to specify those contextual factors that if considered in the CARS prediction model would produce a rating prediction that is most different from the context-free prediction • Results from our offline experiment confirm that the proposed parsimonious context acquisition strategy elicits ratings with contextual information that improve more the recommendation performance 26
  • 74. IntRS’15 - September 2015, Vienna, Austria Future Work • Evaluate the performance of employing an Active Learning method for adaptively selecting both the item to rate and the contextual information to add • Understand how the proposed method can be extended to generate requests for contextual data that takes into account possible correlations between contextual factors • Update the evaluation procedure so that it can be used also on rating datasets for which only a subset of contextual factors is known • Integrate the developed method into our STS app and perform a live user study 27
  • 75. IntRS’15 - September 2015, Vienna, Austria Questions? Thank you.