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MEASUREMENT
SCALES
Presented By: Manoj Patel
Asst. Professor
JHUNJHUNWALA BUSINESS SCHOOL
BACKGROUND
 The "levels of measurement" is an expression which typically
refers to the theory of scale types developed by the psychologist
Stanley Smith Stevens.
 Stevens proposed his theory in a 1946 article titled "On the
theory of scales of measurement”.
 In this article Stevens claimed that all measurement in science
was conducted using four different types of numerical scales
which he called "nominal", "ordinal", "interval" and "ratio".
THE THEORY OF SCALE TYPES
Stevens (1946, 1951) proposed that measurements can be
classified into four different types of scales. These were:
 Nominal
 Ordinal
 Interval
 Ratio
NOMINAL SCALE
 A categorical variable, also called a nominal variable,
is for mutual exclusive, but not ordered, categories.
 Nominal scales are mere codes assigned to objects as
labels, they are not measurements.
 Not a measure of quantity. Measures identity and
difference. People either belong to a group or they do
not.
 Sometimes numbers are used to designate category
membership.
EXAMPLES
 Eye color: blue, brown, green, etc.
 Biological sex (male or female)
 Democrat, republican, green, libertarian, etc.
 Married, single, divorced, widowed
 Country of Origin
 1 = United States 3 = Canada
 2 = Mexico 4 = Other
(Here, the numbers do not have numeric implications; they are simply
convenient labels)
WHAT STATISTIC CAN I APPLY?
OK to compute.... Nominal
Frequency Distribution and mode Yes
Median And Percentiles. No
Add Or Subtract. No
Mean, Standard Deviation, Standard Error Of
The Mean.
No
Ratio, Or Coefficient Of Variation. No
Chi-square
Yes
Ordinal Scale
ORDINAL SCALE
 This scale has the ability to rank the individual attributes
of to items in same group but unit of measurement is not
available in this scale, like student A is taller than student
B but their actual heights are not available.
 Designates an ordering: greater than, less than.
 Does not assume that the intervals between numbers are
equal.
EXAMPLES
 Rank your food preference where 1 = favorite food and 4 = least
favorite:
____ sushi ____ chocolate
____ hamburger ____ papaya
 Final position of horses in a thoroughbred race is an ordinal
variable. The horses finish first, second, third, fourth, and so on.
The difference between first and second is not necessarily
equivalent to the difference between second and third, or between
third and fourth.
WHAT STATISTIC CAN I APPLY?
OK To Compute.... Ordinal
Frequency Distribution. Yes
Median And Percentiles. Yes
Add Or Subtract. No
Mean, Standard Deviation, Standard Error Of The
Mean.
No
Ratio, Or Coefficient Of Variation. No
Interval Scale
INTERVAL SCALE
 Classifies data into groups or categories
 Determines the preferences between items
 Zero point on the internal scale is arbitrary zero, it is not the true zero
point
 Designates an equal-interval ordering.
 The difference in temperature between 20 degrees f and 25 degrees f is
the same as the difference between 76 degrees f and 81 degrees f.
EXAMPLES
 Temperature in Fahrenheit is interval.
 Celsius temperature is an interval variable. It is meaningful to
say that 25 degrees Celsius is 3 degrees hotter than 22 degrees
Celsius, and that 17 degrees Celsius is the same amount hotter (3
degrees) than 14 degrees Celsius. Notice, however, that 0
degrees Celsius does not have a natural meaning. That is, 0
degrees Celsius does not mean the absence of heat!
 Common IQ tests are assumed to use an interval metric.
EXAMPLES
Likert scale: How do you feel about Stats?
1 = I’m totally dreading this class!
2 = I’d rather not take this class.
3 = I feel neutral about this class.
4 = I’m interested in this class.
5 = I’m SO excited to take this class!
WHAT STATISTIC CAN I APPLY?
OK To Compute.... Interval
Frequency Distribution. Yes
Median And Percentiles. Yes
Add Or Subtract. Yes
Mean, Standard Deviation, Correlation, Regression,
Analysis Of Variance
Yes
Ratio, Or Coefficient Of Variation. No
RATIO SCALE
 This is the highest level of measurement and has the
properties of an interval scale; coupled with fixed origin
or zero point.
 It clearly defines the magnitude or value of difference
between two individual items or intervals in same group.
EXAMPLES
 Temperature in Kelvin (zero is the absence of heat.
Can’t get colder).
 Measurements of heights of students in this class (zero
means complete lack of height).
 Someone 6 ft tall is twice as tall as someone 3 feet tall.
 Heart beats per minute has a very natural zero point.
Zero means no heart beats.
What Statistic Can I Apply?
OK To Compute.... Ratio
Frequency Distribution. Yes
Median And Percentiles. Yes
Add Or Subtract. Yes
Mean, Standard Deviation, Correlation, Regression,
Analysis Of Variance
Yes
Ratio, Or Coefficient Of Variation. Yes
Putting It Together
Summary of Levels of Measurement
Determine if one
data value is a
multiple of
another
Subtract
data values
Arrange
data in
order
Put data in
categories
Level of
measurement
NoYesNominal
NoNoYesYesOrdinal
NoYesYesYesInterval
YesYesYesRatio
NoNo
Yes
Test Your Knowledge
A professor is interested in the relationship between the number
of times students are absent from class and the letter grade that
students receive on the final exam. He records the number of
absences for each student, as well as the letter grade
(A,B,C,D,F) each student earns on the final exam. In this
example, what is the measurement scale for number of
absences?
a) Nominal b) Ordinal c) Interval d) Ratio
In the previous example, what is the measurement scale of
letter grade on the final exam?
a) Nominal b) Ordinal c) Interval d) Ratio
ATTITUDE
MEASUREMENT
NATURE OF ATTITUDES
 Cognitive I think oatmeal is healthier than corn
flakes for breakfast.
 Affective BehaviorI hate corn flakes.
 Behavior I intend to eat more oatmeal for
breakfast.
Factors
Specific
Multiple
measures
Reference
groups
Strong
Direct
Basis
Improving the Predictability of Attitudes
SELECTING A MEASUREMENT SCALE
 Research objectives
 Response Types
 Data properties
 Number of Dimensions
 Forced or unforced choices
 Balanced or unbalanced
 Rater errors
 Number of scale points
RESPONSE TYPES
 Rating Scale Estimates magnitude of a
characteristic
 Ranking Scale Rank order preference
 Categorization Selection of preferred alternative
 Sorting Arrange or classify concepts
RATING
Asks the respondent to
estimate the magnitude
of a characteristic, or
quality, that an object
possesses. The
respondent’s position on
a scale(s) is where he or
she would rate an object.
RESPONSE TYPE
RATING
1. Simple Category:
i. Dichotomy
ii. Multiple choice – single response
iii. Multiple choice – multiple responses
2. Likert
3. Semantic Differential
4. Numerical/Multiple Rating List
5. Staple
6. Constant-Sum
7. Graphic Rating
RANKING
Tasks require that the
respondent rank order a
small number of objects in
overall performance on the
basis of some characteristic
or stimulus.
SORTING
Might present the respondent with several
concepts typed on cards and require that the
respondent arrange the cards into a number of
piles or otherwise classify the concepts.
CATEGORIZATION
Between two or more alternatives is another type of
attitude measurement - it is assumed that the chosen
object is preferred over the other.

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Measurement of scales

  • 1. MEASUREMENT SCALES Presented By: Manoj Patel Asst. Professor JHUNJHUNWALA BUSINESS SCHOOL
  • 2. BACKGROUND  The "levels of measurement" is an expression which typically refers to the theory of scale types developed by the psychologist Stanley Smith Stevens.  Stevens proposed his theory in a 1946 article titled "On the theory of scales of measurement”.  In this article Stevens claimed that all measurement in science was conducted using four different types of numerical scales which he called "nominal", "ordinal", "interval" and "ratio".
  • 3. THE THEORY OF SCALE TYPES Stevens (1946, 1951) proposed that measurements can be classified into four different types of scales. These were:  Nominal  Ordinal  Interval  Ratio
  • 4. NOMINAL SCALE  A categorical variable, also called a nominal variable, is for mutual exclusive, but not ordered, categories.  Nominal scales are mere codes assigned to objects as labels, they are not measurements.  Not a measure of quantity. Measures identity and difference. People either belong to a group or they do not.  Sometimes numbers are used to designate category membership.
  • 5. EXAMPLES  Eye color: blue, brown, green, etc.  Biological sex (male or female)  Democrat, republican, green, libertarian, etc.  Married, single, divorced, widowed  Country of Origin  1 = United States 3 = Canada  2 = Mexico 4 = Other (Here, the numbers do not have numeric implications; they are simply convenient labels)
  • 6. WHAT STATISTIC CAN I APPLY? OK to compute.... Nominal Frequency Distribution and mode Yes Median And Percentiles. No Add Or Subtract. No Mean, Standard Deviation, Standard Error Of The Mean. No Ratio, Or Coefficient Of Variation. No Chi-square Yes
  • 8. ORDINAL SCALE  This scale has the ability to rank the individual attributes of to items in same group but unit of measurement is not available in this scale, like student A is taller than student B but their actual heights are not available.  Designates an ordering: greater than, less than.  Does not assume that the intervals between numbers are equal.
  • 9. EXAMPLES  Rank your food preference where 1 = favorite food and 4 = least favorite: ____ sushi ____ chocolate ____ hamburger ____ papaya  Final position of horses in a thoroughbred race is an ordinal variable. The horses finish first, second, third, fourth, and so on. The difference between first and second is not necessarily equivalent to the difference between second and third, or between third and fourth.
  • 10. WHAT STATISTIC CAN I APPLY? OK To Compute.... Ordinal Frequency Distribution. Yes Median And Percentiles. Yes Add Or Subtract. No Mean, Standard Deviation, Standard Error Of The Mean. No Ratio, Or Coefficient Of Variation. No
  • 12. INTERVAL SCALE  Classifies data into groups or categories  Determines the preferences between items  Zero point on the internal scale is arbitrary zero, it is not the true zero point  Designates an equal-interval ordering.  The difference in temperature between 20 degrees f and 25 degrees f is the same as the difference between 76 degrees f and 81 degrees f.
  • 13. EXAMPLES  Temperature in Fahrenheit is interval.  Celsius temperature is an interval variable. It is meaningful to say that 25 degrees Celsius is 3 degrees hotter than 22 degrees Celsius, and that 17 degrees Celsius is the same amount hotter (3 degrees) than 14 degrees Celsius. Notice, however, that 0 degrees Celsius does not have a natural meaning. That is, 0 degrees Celsius does not mean the absence of heat!  Common IQ tests are assumed to use an interval metric.
  • 14. EXAMPLES Likert scale: How do you feel about Stats? 1 = I’m totally dreading this class! 2 = I’d rather not take this class. 3 = I feel neutral about this class. 4 = I’m interested in this class. 5 = I’m SO excited to take this class!
  • 15. WHAT STATISTIC CAN I APPLY? OK To Compute.... Interval Frequency Distribution. Yes Median And Percentiles. Yes Add Or Subtract. Yes Mean, Standard Deviation, Correlation, Regression, Analysis Of Variance Yes Ratio, Or Coefficient Of Variation. No
  • 16. RATIO SCALE  This is the highest level of measurement and has the properties of an interval scale; coupled with fixed origin or zero point.  It clearly defines the magnitude or value of difference between two individual items or intervals in same group.
  • 17. EXAMPLES  Temperature in Kelvin (zero is the absence of heat. Can’t get colder).  Measurements of heights of students in this class (zero means complete lack of height).  Someone 6 ft tall is twice as tall as someone 3 feet tall.  Heart beats per minute has a very natural zero point. Zero means no heart beats.
  • 18. What Statistic Can I Apply? OK To Compute.... Ratio Frequency Distribution. Yes Median And Percentiles. Yes Add Or Subtract. Yes Mean, Standard Deviation, Correlation, Regression, Analysis Of Variance Yes Ratio, Or Coefficient Of Variation. Yes
  • 20.
  • 21. Summary of Levels of Measurement Determine if one data value is a multiple of another Subtract data values Arrange data in order Put data in categories Level of measurement NoYesNominal NoNoYesYesOrdinal NoYesYesYesInterval YesYesYesRatio NoNo Yes
  • 23. A professor is interested in the relationship between the number of times students are absent from class and the letter grade that students receive on the final exam. He records the number of absences for each student, as well as the letter grade (A,B,C,D,F) each student earns on the final exam. In this example, what is the measurement scale for number of absences? a) Nominal b) Ordinal c) Interval d) Ratio
  • 24. In the previous example, what is the measurement scale of letter grade on the final exam? a) Nominal b) Ordinal c) Interval d) Ratio
  • 26. NATURE OF ATTITUDES  Cognitive I think oatmeal is healthier than corn flakes for breakfast.  Affective BehaviorI hate corn flakes.  Behavior I intend to eat more oatmeal for breakfast.
  • 28. SELECTING A MEASUREMENT SCALE  Research objectives  Response Types  Data properties  Number of Dimensions  Forced or unforced choices  Balanced or unbalanced  Rater errors  Number of scale points
  • 29. RESPONSE TYPES  Rating Scale Estimates magnitude of a characteristic  Ranking Scale Rank order preference  Categorization Selection of preferred alternative  Sorting Arrange or classify concepts
  • 30. RATING Asks the respondent to estimate the magnitude of a characteristic, or quality, that an object possesses. The respondent’s position on a scale(s) is where he or she would rate an object.
  • 31. RESPONSE TYPE RATING 1. Simple Category: i. Dichotomy ii. Multiple choice – single response iii. Multiple choice – multiple responses 2. Likert 3. Semantic Differential 4. Numerical/Multiple Rating List 5. Staple 6. Constant-Sum 7. Graphic Rating
  • 32. RANKING Tasks require that the respondent rank order a small number of objects in overall performance on the basis of some characteristic or stimulus.
  • 33. SORTING Might present the respondent with several concepts typed on cards and require that the respondent arrange the cards into a number of piles or otherwise classify the concepts.
  • 34. CATEGORIZATION Between two or more alternatives is another type of attitude measurement - it is assumed that the chosen object is preferred over the other.