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SEMANTICS, RELEVANCE AND MONETIZATION 
Gerald Burnand, CTO
Confidential – Property of NTENT™ 2
Overview 
• Campaign management challenges related to 
paid search advertising 
• Semantic technologies to the rescue 
• Managing a large semantic indexing engine 
• Semantic technologies in action 
Time for questions at the end…. 
Confidential – Property of NTENT™ 3
Today’s Typical Paid Search Advertising 
CAMPAIGN MANAGEMENT 
Confidential – Property of NTENT™ 4
Paid Search Advertising 
Agency 
Ad 
Network 
Consumer 
Publisher 
Product or 
Service 
5 
Advertiser 
Confidential – Property of NTENT™
Building a Campaign 
What you do: 
• Create new campaign 
• Write your ads 
• Landing pages 
• Conversion tracking 
• Fund campaign 
What? Wait! Why? 
• Set up and optimize 
keyword campaigns 
• Become an expert at 
keyword selection 
– negative keywords, quality 
score, broad matching, 
long tail, bid management, 
search query report 
• Acquire tools to help in 
the process 
• Rinse, Repeat … 
Confidential – Property of NTENT™ 6
Common Problems with Keyword Selection 
• Target High Value or Long Tail 
• Deal with Ambiguity 
• Filter Unwanted Articles (and Keywords) 
Confidential – Property of NTENT™ 7
Selecting Keywords 
• Target affordable popular 
queries? 
• Target expensive specific 
queries? 
• Target large volume of 
cheaper long tail queries? 
• Am I forgetting 
any keywords? 
Keyword Competition 
Global 
Monthly 
Searches 
an attorney Medium 13,600,000 
attorney in Medium 13,600,000 
lawyers in High 11,100,000 
attorneys Medium 7,480,000 
attorneys in Medium 7,480,000 
lawyers attorneys High 6,120,000 
attorney lawyer High 6,120,000 
… … … 
attorney accident High 368,000 
attorney for accident High 368,000 
lawyers accident High 368,000 
lawyers for accident High 368,000 
Source: Google Adwords 
Confidential – Property of NTENT™ 8
Addressing Ambiguity 
How do I handle ambiguous keywords? 
Should I show an ad for Which apple did you mean? 
Windows or windows? 
9
Filtering Unwanted Articles (Negative Keywords) 
Both Articles Contain the Words “Camera” and “Killing”. 
Should you include “Killing” as a negative keyword? 
Confidential – Property of NTENT™ 10
It Is Not Simple! 
Confidential – Property of NTENT™ 11
In Summary 
Traditional campaigns management is not trivial: 
• Select the right keywords 
and the right price 
• Avoid undesirable content 
• Continuous tuning 
• Spend time and money on a task 
a machine can do 
Confidential – Property of NTENT™ 12
What is the Alternative? 
Use semantic technologies: 
• Select all possible concepts 
(and associated words) 
relevant to a product 
• Provide disambiguation 
(distinguish between 
meanings) 
• Match relevant adverts to 
articles with concepts rather 
than keywords 
• Flag negative themes and 
undesirable content 
Benefit for advertisers: 
• No need for keyword 
management and difficult 
keyword targeting decisions 
• No steep learning curve to 
advertise online 
• More time to concentrate on 
creative aspects of your 
campaign 
• Protect advertisers brand 
Benefit for publisher: 
• More targeted ads, in line with 
article content yields more 
revenue 
Confidential – Property of NTENT™ 13
A Primer On 
SEMANTIC AD MATCHING 
Confidential – Property of NTENT™ 14
The Concept 
How would a human do it? 
1. Look at an article, its theme 
2. Look at all available adverts, 
what they are about 
3. Select adverts that have most 
concepts in common with the 
article 
4. Pick the most relevant adverts 
Confidential – Property of NTENT™ 15
Semantic Indexing of Article and Adverts 
Publisher Article 
(BHG.com) 
Semantic Ontology 
Product Advert 
& Landing 
Page 
Product Advert 
& Landing 
Page 
Engine 
16 
Confidential – Property of NTENT™
Advert Semantic Indexing 
Advert and Landing Page (TYRRELL & LAING INTL) 
Concept Rank 
bathtub (shower or tub) 2.0000 
Stone (Masonry) 1.1340 
shower or tub (bathroom product) 0.5000 
accommodation/lodging (travel service) 0.4433 
plumbing supply (building supply) 0.3299 
plumbing product (products) 0.3299 
condo (home type) 0.2887 
range (cooking appliance) 0.2680 
jacuzzi tub (pool and pool maintenance) 0.2474 
houseware (products) 0.2062 
bathroom product (products) 0.1186 
17 
Confidential – Property of NTENT™
Semantic Indexing on Advert Contempo Living 
Advert and Landing Page (Contempo Living) 
Concept Rank 
bathroom faucet (faucet) 1.0139 
kitchen faucet (faucet) 1.0000 
plumbing supply (building supply) 0.9583 
sink (plumbing product) 0.8194 
houseware (products) 0.7083 
cabinet (indoor furniture) 0.5417 
garden tool (gardening equipment) 0.4667 
gardening supplies (Parts and Supplies) 0.4583 
garden decor (home decor) 0.4583 
cabinet hardware (architectural hardware) 0.2778 
kitchen products (products) 0.2778 
plumbing product (products) 0.2396 
bathroom product (products) 0.2361 
faucet (plumbing product) 0.1875 
Confidential – Property of NTENT™ 18
Article Semantic Indexing (BHG.com) 
The first time a user visits the publisher article (BHG.com) 
Concept Rank 
bathroom faucet (faucet) 1.3744 
gardening supplies (Parts and Supplies) 0.9075 
garden decor (home decor) 0.9075 
plumbing supply (building supply) 0.8987 
garden tool (gardening equipment) 0.8943 
houseware (products) 0.6079 
sink (plumbing product) 0.5815 
faucet spout (faucet) 0.3348 
faucet (plumbing product) 0.2930 
bathroom product (products) 0.2555 
plumbing product (products) 0.2247 
finish (painting supply) 0.1850 
washer (nuts and bolts) 0.1410 
countertop (kitchen products) 0.1233 
Confidential – Property of NTENT™ 19
Matching Article and Adverts 
. . . 
Publisher Article (BHG.com) Product Landing 
Page and Advert 
Confidential – Property of NTENT™ 20
Ad Matching against Tyrell & Laing 
Landing Page (TYRRELL & LAING) 
Publisher Article (BHG.com) 
Concept Rank 
bathroom faucet (faucet) 1.3744 
gardening supplies (Parts and Supplies) 0.9075 
garden decor (home decor) 0.9075 
plumbing supply (building supply) 0.8987 
garden tool (gardening equipment) 0.8943 
houseware (products) 0.6079 
sink (plumbing product) 0.5815 
faucet spout (faucet) 0.3348 
faucet (plumbing product) 0.2930 
bathroom product (products) 0.2555 
plumbing product (products) 0.2247 
finish (painting supply) 0.1850 
washer (nuts and bolts) 0.1410 
countertop (kitchen products) 0.1233 
Concept Rank 
bathtub (shower or tub) 2.0000 
Stone (Masonry) 1.1340 
shower or tub (bathroom product) 0.5000 
accommodation/lodging (travel service) 0.4433 
plumbing supply (building supply) 0.3299 
plumbing product (products) 0.3299 
condo (home type) 0.2887 
range (cooking appliance) 0.2680 
jacuzzi tub (pool and pool maintenance) 0.2474 
houseware (products) 0.2062 
bathroom product (products) 0.1186 
Confidential – Property of NTENT™ 21
Ad Matching against Contempo Living 
Publisher Article (BHG.com) Landing Page (Contempo Living) 
Concept Rank 
bathroom faucet (faucet) 1.3744 
gardening supplies (Parts and Supplies) 0.9075 
garden decor (home decor) 0.9075 
plumbing supply (building supply) 0.8987 
garden tool (gardening equipment) 0.8943 
houseware (products) 0.6079 
sink (plumbing product) 0.5815 
faucet spout (faucet) 0.3348 
faucet (plumbing product) 0.2930 
bathroom product (products) 0.2555 
plumbing product (products) 0.2247 
finish (painting supply) 0.1850 
washer (nuts and bolts) 0.1410 
countertop (kitchen products) 0.1233 
Concept Rank 
bathroom faucet (faucet) 1.0139 
kitchen faucet (faucet) 1.0000 
plumbing supply (building supply) 0.9583 
sink (plumbing product) 0.8194 
houseware (products) 0.7083 
cabinet (indoor furniture) 0.5417 
garden tool (gardening equipment) 0.4667 
gardening supplies (Parts and Supplies) 0.4583 
garden decor (home decor) 0.4583 
cabinet hardware (architectural hardware) 0.2778 
kitchen products (products) 0.2778 
plumbing product (products) 0.2396 
bathroom product (products) 0.2361 
faucet (plumbing product) 0.1875 
22
Resulting Ads 
Best 
Less Relevant 
Confidential – Property of NTENT™ 23
Flag Negative Themes and Undesirable Content 
Concept Rank 
dictator (authoritarian) 104 
Serbia (Geographical Region) 74 
Balkan State (Geographical Region) 57 
Beograd (city) 54 
The Observer (UK newspaper) 46 
garden (cultivated land) 38 
former head of state (statesmen) 34 
ex-president (former head of state) 31 
the Hague (city) 26 
coffin (burial container) 25 
Yugoslav (Historic Nation) 20 
funeral ceremony (professional service) 20 
husband (mate) 20 
presidents family (Family) 18 
town (municipality) 18 
married woman (mate) 17 
son (male offspring) 17 
socialist party (political party) 17 
man (male person) 15 
hero (person) 14 
minority (Ethnicity) 14 
lime tree (Citrus amara) 13 
prison cell (cell) 13 
war criminal (criminal) 13 
Id Facet Name 
death_Topic Death 
unfortunateEvent_Topic Unfortunate Event s 
war_Topic War 
Fertilizer company 
may want to skip advertising 
on this page 
SemTechBiz NYC 2013 24 
Confidential – Property of NTENT™
Semantics Brings Relevance 
Let the machine do the tricky part! 
• Operates at the concept 
level, not keywords 
• Handles disambiguation 
• Facet classification 
is more subtle than 
negative keywords 
Confidential – Property of NTENT™ 25
Relevance Improves Monetization 
• No need for keyword 
management 
• Integrated brand safety 
• No spending on 
additional tools 
Do What You Do Best: 
• Build new campaign 
• Write your ads 
• Optimize landing pages 
• Track conversion 
Confidential – Property of NTENT™ 26
What It Takes To Engineer the 
SEMANTIC INDEXING ENGINE 
27 
Confidential – Property of NTENT™
Two Main Components 
Semantic Indexer Ontology 
Confidential – Property of NTENT™ 28
Large Ontology 
• 500K Concepts 
• Over 2.5M Expressions 
(language-specific) 
• Links between concepts 
• Dozens of domains 
• Broad coverage allows 
ontology to capture ambiguity 
• Rule-based facets track 
offensive language, 
adult content, unfortunate 
events 
29 
Intermediate 
Specific 
Lepidoptera 
Butterfly 
Generic 
Living Being
Semantic Indexing 
• HTML Parsing 
• Language Detection 
• Tokenization and stemming 
• Boilerplate Detection 
• Concepts identification and 
disambiguation 
• Entity extraction 
• Rule-based & Bayesian 
faceting 
Confidential – Property of NTENT™ 30
Example: King Disambiguation 
I defeated the king 
with a rook. 
I won the king with 
an ace. 
Confidential – Property of NTENT™ 31
32 
King Specialization in the Ontology 
king king 
More Generic 
Confidential – Property of NTENT™
33 
Activation and Disambiguation 
I defeated the king with a rook. 
Screenshot of NTENT’s visualization tool Confidential – Property of NTENT™
34 
Activation and Disambiguation 
I won the king with an ace. 
Screenshot of NTENT’s visualization tool Confidential – Property of NTENT™
Maintaining a Large Ontology 
• Ontology is source 
controlled 
• Tools to edit, visualize 
ontology 
• Consistency checks to 
validate structure 
• Daily TREC-like test to 
control quality 
Confidential – Property of NTENT™ 35
36 
Ontologized Concept: Faucet 
Confidential – Property of NTENT™
Neighbors 
Faucet: Parent Concepts 
Subsumption 
Relationships 
Confidential – Property of NTENT™ 37
38 
Faucet: Broader and Narrower Concepts 
Confidential – Property of NTENT™
Faucet: Parts, Homonyms 
Confidential – Property of NTENT™ 39
Error Detection 
Confidential – Property of NTENT™ 40
Concept Editing 
41
Concept Editing 
42
Daily Quality Checks 
Screenshot of TREC-style quality evaluation 43 
Confidential – Property of NTENT™
Robust Semantic Platform 
• Large ontology with deep coverage in 
dozens of verticals 
• Continuous improvement backed by 
powerful visualization and editing tools 
• Daily consistency and quality assessment 
• Improvements benefit all 
advertisers and publishers 
Confidential – Property of NTENT™ 44
SEMANTIC APPLICATIONS 
45
Designed for publishers looking to monetize their content more effectively, our NTENTLink™ widget provides 
a better ad experience by matching relevant ads to publisher content based on page-level relevance. 
46 
CONTENT MONETIZATION: NTENT ADS 
Powered with “intelligence” that understands the context of every web page, NTENTLink™ targets ads with 
unparalleled relevance.
Personalize the way users discover video content with our Video Recommendation Engine. It analyzes users’ 
interests and site content to fuel intelligent and relevant video recommendations in real-time. 
47 
VIDEO RECOMMENDATIONS 
1. Semantic Analysis: 
Our semantic engine 
conducts page-level content 
analysis 
2. Personalization: 
We surface relevant video 
recommendations based on 
user interest 
3. Engagement and Monetization: 
Users click to play, an overlay expands 
and a video pre-roll is served prior to 
the main video content
Give your users access to a faster, more relevant way to navigate the web directly from your site. NTENT’s 
cross-platform search application integrates easily into your site, inside your apps or on your mobile site. 
48 
CONTENT MONETIZATION: NTENT SEARCH 
Site or Browser Install In-App Mobile Browsers 
Every search query generates a new revenue opportunity for you, giving you access to additional ad 
impressions and the ability to increase time spent on your site.
Thank You! 
www.ntent.com Gerald Burnand 
gburnand@ntent.com

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WEBINAR: Monetizing Content with Semantic Technologies

  • 1. SEMANTICS, RELEVANCE AND MONETIZATION Gerald Burnand, CTO
  • 3. Overview • Campaign management challenges related to paid search advertising • Semantic technologies to the rescue • Managing a large semantic indexing engine • Semantic technologies in action Time for questions at the end…. Confidential – Property of NTENT™ 3
  • 4. Today’s Typical Paid Search Advertising CAMPAIGN MANAGEMENT Confidential – Property of NTENT™ 4
  • 5. Paid Search Advertising Agency Ad Network Consumer Publisher Product or Service 5 Advertiser Confidential – Property of NTENT™
  • 6. Building a Campaign What you do: • Create new campaign • Write your ads • Landing pages • Conversion tracking • Fund campaign What? Wait! Why? • Set up and optimize keyword campaigns • Become an expert at keyword selection – negative keywords, quality score, broad matching, long tail, bid management, search query report • Acquire tools to help in the process • Rinse, Repeat … Confidential – Property of NTENT™ 6
  • 7. Common Problems with Keyword Selection • Target High Value or Long Tail • Deal with Ambiguity • Filter Unwanted Articles (and Keywords) Confidential – Property of NTENT™ 7
  • 8. Selecting Keywords • Target affordable popular queries? • Target expensive specific queries? • Target large volume of cheaper long tail queries? • Am I forgetting any keywords? Keyword Competition Global Monthly Searches an attorney Medium 13,600,000 attorney in Medium 13,600,000 lawyers in High 11,100,000 attorneys Medium 7,480,000 attorneys in Medium 7,480,000 lawyers attorneys High 6,120,000 attorney lawyer High 6,120,000 … … … attorney accident High 368,000 attorney for accident High 368,000 lawyers accident High 368,000 lawyers for accident High 368,000 Source: Google Adwords Confidential – Property of NTENT™ 8
  • 9. Addressing Ambiguity How do I handle ambiguous keywords? Should I show an ad for Which apple did you mean? Windows or windows? 9
  • 10. Filtering Unwanted Articles (Negative Keywords) Both Articles Contain the Words “Camera” and “Killing”. Should you include “Killing” as a negative keyword? Confidential – Property of NTENT™ 10
  • 11. It Is Not Simple! Confidential – Property of NTENT™ 11
  • 12. In Summary Traditional campaigns management is not trivial: • Select the right keywords and the right price • Avoid undesirable content • Continuous tuning • Spend time and money on a task a machine can do Confidential – Property of NTENT™ 12
  • 13. What is the Alternative? Use semantic technologies: • Select all possible concepts (and associated words) relevant to a product • Provide disambiguation (distinguish between meanings) • Match relevant adverts to articles with concepts rather than keywords • Flag negative themes and undesirable content Benefit for advertisers: • No need for keyword management and difficult keyword targeting decisions • No steep learning curve to advertise online • More time to concentrate on creative aspects of your campaign • Protect advertisers brand Benefit for publisher: • More targeted ads, in line with article content yields more revenue Confidential – Property of NTENT™ 13
  • 14. A Primer On SEMANTIC AD MATCHING Confidential – Property of NTENT™ 14
  • 15. The Concept How would a human do it? 1. Look at an article, its theme 2. Look at all available adverts, what they are about 3. Select adverts that have most concepts in common with the article 4. Pick the most relevant adverts Confidential – Property of NTENT™ 15
  • 16. Semantic Indexing of Article and Adverts Publisher Article (BHG.com) Semantic Ontology Product Advert & Landing Page Product Advert & Landing Page Engine 16 Confidential – Property of NTENT™
  • 17. Advert Semantic Indexing Advert and Landing Page (TYRRELL & LAING INTL) Concept Rank bathtub (shower or tub) 2.0000 Stone (Masonry) 1.1340 shower or tub (bathroom product) 0.5000 accommodation/lodging (travel service) 0.4433 plumbing supply (building supply) 0.3299 plumbing product (products) 0.3299 condo (home type) 0.2887 range (cooking appliance) 0.2680 jacuzzi tub (pool and pool maintenance) 0.2474 houseware (products) 0.2062 bathroom product (products) 0.1186 17 Confidential – Property of NTENT™
  • 18. Semantic Indexing on Advert Contempo Living Advert and Landing Page (Contempo Living) Concept Rank bathroom faucet (faucet) 1.0139 kitchen faucet (faucet) 1.0000 plumbing supply (building supply) 0.9583 sink (plumbing product) 0.8194 houseware (products) 0.7083 cabinet (indoor furniture) 0.5417 garden tool (gardening equipment) 0.4667 gardening supplies (Parts and Supplies) 0.4583 garden decor (home decor) 0.4583 cabinet hardware (architectural hardware) 0.2778 kitchen products (products) 0.2778 plumbing product (products) 0.2396 bathroom product (products) 0.2361 faucet (plumbing product) 0.1875 Confidential – Property of NTENT™ 18
  • 19. Article Semantic Indexing (BHG.com) The first time a user visits the publisher article (BHG.com) Concept Rank bathroom faucet (faucet) 1.3744 gardening supplies (Parts and Supplies) 0.9075 garden decor (home decor) 0.9075 plumbing supply (building supply) 0.8987 garden tool (gardening equipment) 0.8943 houseware (products) 0.6079 sink (plumbing product) 0.5815 faucet spout (faucet) 0.3348 faucet (plumbing product) 0.2930 bathroom product (products) 0.2555 plumbing product (products) 0.2247 finish (painting supply) 0.1850 washer (nuts and bolts) 0.1410 countertop (kitchen products) 0.1233 Confidential – Property of NTENT™ 19
  • 20. Matching Article and Adverts . . . Publisher Article (BHG.com) Product Landing Page and Advert Confidential – Property of NTENT™ 20
  • 21. Ad Matching against Tyrell & Laing Landing Page (TYRRELL & LAING) Publisher Article (BHG.com) Concept Rank bathroom faucet (faucet) 1.3744 gardening supplies (Parts and Supplies) 0.9075 garden decor (home decor) 0.9075 plumbing supply (building supply) 0.8987 garden tool (gardening equipment) 0.8943 houseware (products) 0.6079 sink (plumbing product) 0.5815 faucet spout (faucet) 0.3348 faucet (plumbing product) 0.2930 bathroom product (products) 0.2555 plumbing product (products) 0.2247 finish (painting supply) 0.1850 washer (nuts and bolts) 0.1410 countertop (kitchen products) 0.1233 Concept Rank bathtub (shower or tub) 2.0000 Stone (Masonry) 1.1340 shower or tub (bathroom product) 0.5000 accommodation/lodging (travel service) 0.4433 plumbing supply (building supply) 0.3299 plumbing product (products) 0.3299 condo (home type) 0.2887 range (cooking appliance) 0.2680 jacuzzi tub (pool and pool maintenance) 0.2474 houseware (products) 0.2062 bathroom product (products) 0.1186 Confidential – Property of NTENT™ 21
  • 22. Ad Matching against Contempo Living Publisher Article (BHG.com) Landing Page (Contempo Living) Concept Rank bathroom faucet (faucet) 1.3744 gardening supplies (Parts and Supplies) 0.9075 garden decor (home decor) 0.9075 plumbing supply (building supply) 0.8987 garden tool (gardening equipment) 0.8943 houseware (products) 0.6079 sink (plumbing product) 0.5815 faucet spout (faucet) 0.3348 faucet (plumbing product) 0.2930 bathroom product (products) 0.2555 plumbing product (products) 0.2247 finish (painting supply) 0.1850 washer (nuts and bolts) 0.1410 countertop (kitchen products) 0.1233 Concept Rank bathroom faucet (faucet) 1.0139 kitchen faucet (faucet) 1.0000 plumbing supply (building supply) 0.9583 sink (plumbing product) 0.8194 houseware (products) 0.7083 cabinet (indoor furniture) 0.5417 garden tool (gardening equipment) 0.4667 gardening supplies (Parts and Supplies) 0.4583 garden decor (home decor) 0.4583 cabinet hardware (architectural hardware) 0.2778 kitchen products (products) 0.2778 plumbing product (products) 0.2396 bathroom product (products) 0.2361 faucet (plumbing product) 0.1875 22
  • 23. Resulting Ads Best Less Relevant Confidential – Property of NTENT™ 23
  • 24. Flag Negative Themes and Undesirable Content Concept Rank dictator (authoritarian) 104 Serbia (Geographical Region) 74 Balkan State (Geographical Region) 57 Beograd (city) 54 The Observer (UK newspaper) 46 garden (cultivated land) 38 former head of state (statesmen) 34 ex-president (former head of state) 31 the Hague (city) 26 coffin (burial container) 25 Yugoslav (Historic Nation) 20 funeral ceremony (professional service) 20 husband (mate) 20 presidents family (Family) 18 town (municipality) 18 married woman (mate) 17 son (male offspring) 17 socialist party (political party) 17 man (male person) 15 hero (person) 14 minority (Ethnicity) 14 lime tree (Citrus amara) 13 prison cell (cell) 13 war criminal (criminal) 13 Id Facet Name death_Topic Death unfortunateEvent_Topic Unfortunate Event s war_Topic War Fertilizer company may want to skip advertising on this page SemTechBiz NYC 2013 24 Confidential – Property of NTENT™
  • 25. Semantics Brings Relevance Let the machine do the tricky part! • Operates at the concept level, not keywords • Handles disambiguation • Facet classification is more subtle than negative keywords Confidential – Property of NTENT™ 25
  • 26. Relevance Improves Monetization • No need for keyword management • Integrated brand safety • No spending on additional tools Do What You Do Best: • Build new campaign • Write your ads • Optimize landing pages • Track conversion Confidential – Property of NTENT™ 26
  • 27. What It Takes To Engineer the SEMANTIC INDEXING ENGINE 27 Confidential – Property of NTENT™
  • 28. Two Main Components Semantic Indexer Ontology Confidential – Property of NTENT™ 28
  • 29. Large Ontology • 500K Concepts • Over 2.5M Expressions (language-specific) • Links between concepts • Dozens of domains • Broad coverage allows ontology to capture ambiguity • Rule-based facets track offensive language, adult content, unfortunate events 29 Intermediate Specific Lepidoptera Butterfly Generic Living Being
  • 30. Semantic Indexing • HTML Parsing • Language Detection • Tokenization and stemming • Boilerplate Detection • Concepts identification and disambiguation • Entity extraction • Rule-based & Bayesian faceting Confidential – Property of NTENT™ 30
  • 31. Example: King Disambiguation I defeated the king with a rook. I won the king with an ace. Confidential – Property of NTENT™ 31
  • 32. 32 King Specialization in the Ontology king king More Generic Confidential – Property of NTENT™
  • 33. 33 Activation and Disambiguation I defeated the king with a rook. Screenshot of NTENT’s visualization tool Confidential – Property of NTENT™
  • 34. 34 Activation and Disambiguation I won the king with an ace. Screenshot of NTENT’s visualization tool Confidential – Property of NTENT™
  • 35. Maintaining a Large Ontology • Ontology is source controlled • Tools to edit, visualize ontology • Consistency checks to validate structure • Daily TREC-like test to control quality Confidential – Property of NTENT™ 35
  • 36. 36 Ontologized Concept: Faucet Confidential – Property of NTENT™
  • 37. Neighbors Faucet: Parent Concepts Subsumption Relationships Confidential – Property of NTENT™ 37
  • 38. 38 Faucet: Broader and Narrower Concepts Confidential – Property of NTENT™
  • 39. Faucet: Parts, Homonyms Confidential – Property of NTENT™ 39
  • 40. Error Detection Confidential – Property of NTENT™ 40
  • 43. Daily Quality Checks Screenshot of TREC-style quality evaluation 43 Confidential – Property of NTENT™
  • 44. Robust Semantic Platform • Large ontology with deep coverage in dozens of verticals • Continuous improvement backed by powerful visualization and editing tools • Daily consistency and quality assessment • Improvements benefit all advertisers and publishers Confidential – Property of NTENT™ 44
  • 46. Designed for publishers looking to monetize their content more effectively, our NTENTLink™ widget provides a better ad experience by matching relevant ads to publisher content based on page-level relevance. 46 CONTENT MONETIZATION: NTENT ADS Powered with “intelligence” that understands the context of every web page, NTENTLink™ targets ads with unparalleled relevance.
  • 47. Personalize the way users discover video content with our Video Recommendation Engine. It analyzes users’ interests and site content to fuel intelligent and relevant video recommendations in real-time. 47 VIDEO RECOMMENDATIONS 1. Semantic Analysis: Our semantic engine conducts page-level content analysis 2. Personalization: We surface relevant video recommendations based on user interest 3. Engagement and Monetization: Users click to play, an overlay expands and a video pre-roll is served prior to the main video content
  • 48. Give your users access to a faster, more relevant way to navigate the web directly from your site. NTENT’s cross-platform search application integrates easily into your site, inside your apps or on your mobile site. 48 CONTENT MONETIZATION: NTENT SEARCH Site or Browser Install In-App Mobile Browsers Every search query generates a new revenue opportunity for you, giving you access to additional ad impressions and the ability to increase time spent on your site.
  • 49. Thank You! www.ntent.com Gerald Burnand gburnand@ntent.com

Hinweis der Redaktion

  1. See also: http://infographiclist.com/2013/05/02/the-most-expensive-google-adwords-keywords-infographic/
  2. http://techthirsty.com/2013/08/30/sony-rx1-r-is-proof-that-sony-is-just-as-capable-as-camera-marquees-like-canon-and-nikon/ http://www.washingtonpost.com/blogs/local/wp/2013/08/29/in-fairfax-cameras-in-the-pham-murder-trial-not-intrusive-but-did-they-affect-the-sentence/
  3. http://www.searchmarketingstandard.com/3-ways-to-avoid-ambiguity-in-online-marketing http://www.whitesharkmedia.com/blog/case-study-bad-keyword-list/ http://www.theguardian.com/technology/2013/mar/13/google-keyword-advertising-wastes-money-ebay http://www.verticalresponse.com/blog/5-ways-to-eliminate-wasted-spend-in-google-adwords/ http://www.wordstream.com/articles/ultimate-guide-to-keyword-competition http://www.modomediagroup.com/2013/07/are-you-targeting-the-right-keywords/ http://www.seochat.com/c/a/search-engine-optimization-help/search-engine-keyword-analysis-pitfalls/ http://searchengineland.com/common-keyword-selection-mistakes-and-how-to-avoid-them-16845