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Factor Analysis
Introduction
• Factor analysis is a statistical techniques to study the
inter-relationships among the variables in an effort to
find a new set of factors, fever in number than the
original variables so that the factors are common
among the original variables.
• There is difference between factor analysis and
principal component analysis.
• In principal component analysis the components are
so selected that they can explain maximum variation
in the original data set.
• In factor analysis a small number of common factors
are extracted so that these common factors are
sufficient to study the relationships of original
variables.
Aims of Factor Analysis
• Factor analysis helps the researcher to reduce the number of variables to
be analyzed, thereby making the analysis easier.
• For example, Consider a market researcher at a credit card company who
wants to evaluate the credit card usage and behaviour of customers, using
various variables. The variables include age, gender, marital status, income
level, education, employment status, credit history and family background.
• Analysis based on a wide range of variables can be tedious and time
consuming.
• Using Factor Analysis, the researcher can reduce the large number of
variables into a few dimensions called factors that summarize the available
data.
• Its aims at grouping the original input variables into factors which
underlying the input variables.
• For example, age, gender, marital status can be combined under a factor
called demographic characteristics. The income level, education,
employment status can be combined under a factor called socio-economic
status. The credit card and family background can be combined under
factor called background status.
Benefits of Factor Analysis
• To identify the hidden dimensions or construct which
may not be apparent from direct analysis
• To identify relationships between variables
• It helps in data reduction
• It helps the researcher to cluster the product and
population being analyzed.
Terminology in Factor Analysis
• Factor: A factor is an underlying construct or dimension that
represent a set of observed variables. In the credit card
company example, the demographic characteristics, socio
economic status and background status represent a set of
variables.
• Factor Loadings: Factor loading help in interpreting and
labeling the factors. It measure how closely the variables in the
factor are associated. It is also called factor-variable correlation.
Factor loadings are correlation coefficients between the
variables and the factors.
• Eigen Values: Eigen values measure the variance in all the
variables corresponding to the factor. Eigen values are
calculated by adding the squares of factor loading of all the
variables in the factor. It aid in explaining the importance of the
factor with respect to variables.Generally factors with eigen
values more than 1.0 are considered stable. The factors that
have low eigen values (<1.0) may not explain the variance in
the variables related to that factor.
Terminology in Factor Analysis
• Communalities: Communalities, denoted by h2, measure the
percentage of variance in each variable explained by the
factors extracted. It ranges from 0 to 1. A high communality
value indicates that the maximum amount of the variance in
the variable is explained by the factors extracted from the
factor analysis.
• Total Variance explained: The total variance explained is the
percentage of total variance of the variables explained. This is
calculating by adding all the communality values of each
variable and dividing it by the number of variables.
• Factor Variance explained: The factor variance explained is
the percentage of total variance of the variables explained by
the factors. This is calculating by adding the squared factor
loadings of all the variables and dividing it by the number of
variables.
Procedure followed for Factor Analysis
• Define the problem
• Construct the correlation matrix that measures the
relationship between the factors and the variables.
• Select an appropriate factor analysis method
• Determine the number of factors
• Rotation of factors
• Interpret the factors
• Determine the factor scores
Application Areas/Example
1. In marketing research, a common application area of Factor Analysis is to
understand underlying motives of consumers who buy a product category or a
brand
2. The worked out example in the chapter will help clarify the use of Factor
Analysis in Marketing Research
3. In this example, we assume that a two wheeler manufacturer is interested in
determining which variables his potential customers think about when they
consider his product
4. Let us assume that twenty two-wheeler owners were surveyed by this
manufacturer (or by a marketing research company on his behalf). They were
asked to indicate on a seven point scale (1=Completely Agree, 7=Completely
Disagree), their agreement or disagreement with a set of ten statements relating
to their perceptions and some attributes of the two-wheelers.
5. The objective of doing Factor Analysis is to find underlying "factors" which
would be fewer than 10 in number, but would be linear combinations of some
of the original 10 variables.
The research design for data collection can be stated as follows-
Twenty 2-wheeler users were surveyed about their perceptions and image
attributes of the vehicles they owned. Ten questions were asked to each of
them, all answered on a scale of 1 to 7 (1= completely agree, 7= completely
disagree).
1. I use a 2-wheeler because it is affordable.
2. It gives me a sense of freedom to own a 2-wheeler.
3. Low maintenance cost makes a 2-wheeler very economical in the long
run.
4. A 2-wheeler is essentially a man’s vehicle.
5. I feel very powerful when I am on my 2-wheeler.
6. Some of my friends who don’t have their own vehicle are jealous of me.
7. I feel good whenever I see the ad for 2-wheeler on T.V., in a magazine or
on a hoarding.
8. My vehicle gives me a comfortable ride.
9. I think 2-wheelers are a safe way to travel.
10. Three people should be legally allowed to travel on a 2-wheeler.
Now we will attempt to interpret factor 2. We look in fig 4,
down the column for Factor 2, and find that variables 8 and 9
have high loadings of 0.85203 and 0.87772, respectively. This
indicates that factor 2 is a combination of these two variables.
But if we look at fig. 2, the unrotated factor matrix, a slightly
different picture emerges. Here, variable 3 also has a high
loading on factor 2, along with variables 8 and 9. It is left to the
researcher which interpretation he wants to use, as there are no
hard and fast rules. Assuming we decide to use all three
variables, the related statements are “low maintenance”,
“comfort” and “safety” (from statements 3, 8 and 9). We may
combine these variables into a factor called “utility” or
“functional features” or any other similar word or phrase which
captures the essence of these three statements / variables.
For interpreting Factor 3, we look at the column labelled factor 3
in fig. 4 and find that variables 1 and 10 are loaded high on factor
3. According to the unrotated factor matrix of fig. 2, only variable
10 loads high on factor 3. Supposing we stick to fig. 4, then the
combination of “affordability’ and “cost saving by 3 people
legally riding on a 2-wheeler” give the impression that factor 3
could be “economy” or “low cost”.
We have now completed interpretation of the 3 factors with eigen
values of 1 or more. We will now look at some additional issues
which may be of importance in using factor analysis.
Additional Issues in Interpreting Solutions
We must guard against the possibility that a variable may load
highly on more than one factors. Strictly speaking, a variable should
load close to 1.00 on one and only one factor, and load close to 0 on
the other factors. If this is not the case, it indicates that either the
sample of respondents have more than one opinion about the
variable, or that the question/ variable may be unclear in its
phrasing.
The other issue important in practical use of factor analysis is the
answer to the question ‘what should be considered a high loading
and what is not a high loading?” Here, unfortunately, there is no
clear-cut guideline, and many a time, we must look at relative
values in the factor matrix. Sometimes, 0.7 may be treated as a high
value, while sometimes 0.9 could be the cutoff for high values.
The proportion of variance in any one of the original variables which is
captured by the extracted factors is known as Communality. For example,
fig. 3 tells us that after 3 factors were extracted and retained, the communality
is 0.72243 for variable 1, 0.45214 for variable 2 and so on (from the column
labelled communality in fig. 3).
This means that 0.72243 or 72.24 percent of the variance (information
content) of variable 1 is being captured by our 3 extracted factors together.
Variable 2 exhibits a low communality value of 0.45214. This implies that
only 45.214 percent of the variance in variable 2 is captured by our extracted
factors. This may also partially explain why variable 2 is not appearing in our
final interpretation of the factors (in the earlier section). It is possible that
variable 2 is an independent variable which is not combining well with any
other variable, and therefore should be further investigated separately.
“Freedom” could be a different concept in the minds of our target audience.
As a final comment, it is again the author’s recommendation that we use the
rotated factor matrix (rather than unrotated factor matrix) for interpreting
factors, particularly when we use the principal components method for
extraction of factors in stage 1.
Orthogonal Rotations
• Varimax: Minimize the complexity of the
components by making the large loadings larger
and the small loadings smaller within each
component.
• Quartimax: Makes large loadings larger and small
loadings smaller within each variable.
• Equamax: A compromize between these two.

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Factor Analysis.ppt

  • 2. Introduction • Factor analysis is a statistical techniques to study the inter-relationships among the variables in an effort to find a new set of factors, fever in number than the original variables so that the factors are common among the original variables. • There is difference between factor analysis and principal component analysis. • In principal component analysis the components are so selected that they can explain maximum variation in the original data set. • In factor analysis a small number of common factors are extracted so that these common factors are sufficient to study the relationships of original variables.
  • 3. Aims of Factor Analysis • Factor analysis helps the researcher to reduce the number of variables to be analyzed, thereby making the analysis easier. • For example, Consider a market researcher at a credit card company who wants to evaluate the credit card usage and behaviour of customers, using various variables. The variables include age, gender, marital status, income level, education, employment status, credit history and family background. • Analysis based on a wide range of variables can be tedious and time consuming. • Using Factor Analysis, the researcher can reduce the large number of variables into a few dimensions called factors that summarize the available data. • Its aims at grouping the original input variables into factors which underlying the input variables. • For example, age, gender, marital status can be combined under a factor called demographic characteristics. The income level, education, employment status can be combined under a factor called socio-economic status. The credit card and family background can be combined under factor called background status.
  • 4. Benefits of Factor Analysis • To identify the hidden dimensions or construct which may not be apparent from direct analysis • To identify relationships between variables • It helps in data reduction • It helps the researcher to cluster the product and population being analyzed.
  • 5. Terminology in Factor Analysis • Factor: A factor is an underlying construct or dimension that represent a set of observed variables. In the credit card company example, the demographic characteristics, socio economic status and background status represent a set of variables. • Factor Loadings: Factor loading help in interpreting and labeling the factors. It measure how closely the variables in the factor are associated. It is also called factor-variable correlation. Factor loadings are correlation coefficients between the variables and the factors. • Eigen Values: Eigen values measure the variance in all the variables corresponding to the factor. Eigen values are calculated by adding the squares of factor loading of all the variables in the factor. It aid in explaining the importance of the factor with respect to variables.Generally factors with eigen values more than 1.0 are considered stable. The factors that have low eigen values (<1.0) may not explain the variance in the variables related to that factor.
  • 6. Terminology in Factor Analysis • Communalities: Communalities, denoted by h2, measure the percentage of variance in each variable explained by the factors extracted. It ranges from 0 to 1. A high communality value indicates that the maximum amount of the variance in the variable is explained by the factors extracted from the factor analysis. • Total Variance explained: The total variance explained is the percentage of total variance of the variables explained. This is calculating by adding all the communality values of each variable and dividing it by the number of variables. • Factor Variance explained: The factor variance explained is the percentage of total variance of the variables explained by the factors. This is calculating by adding the squared factor loadings of all the variables and dividing it by the number of variables.
  • 7. Procedure followed for Factor Analysis • Define the problem • Construct the correlation matrix that measures the relationship between the factors and the variables. • Select an appropriate factor analysis method • Determine the number of factors • Rotation of factors • Interpret the factors • Determine the factor scores
  • 8. Application Areas/Example 1. In marketing research, a common application area of Factor Analysis is to understand underlying motives of consumers who buy a product category or a brand 2. The worked out example in the chapter will help clarify the use of Factor Analysis in Marketing Research 3. In this example, we assume that a two wheeler manufacturer is interested in determining which variables his potential customers think about when they consider his product 4. Let us assume that twenty two-wheeler owners were surveyed by this manufacturer (or by a marketing research company on his behalf). They were asked to indicate on a seven point scale (1=Completely Agree, 7=Completely Disagree), their agreement or disagreement with a set of ten statements relating to their perceptions and some attributes of the two-wheelers. 5. The objective of doing Factor Analysis is to find underlying "factors" which would be fewer than 10 in number, but would be linear combinations of some of the original 10 variables.
  • 9. The research design for data collection can be stated as follows- Twenty 2-wheeler users were surveyed about their perceptions and image attributes of the vehicles they owned. Ten questions were asked to each of them, all answered on a scale of 1 to 7 (1= completely agree, 7= completely disagree). 1. I use a 2-wheeler because it is affordable. 2. It gives me a sense of freedom to own a 2-wheeler. 3. Low maintenance cost makes a 2-wheeler very economical in the long run. 4. A 2-wheeler is essentially a man’s vehicle. 5. I feel very powerful when I am on my 2-wheeler. 6. Some of my friends who don’t have their own vehicle are jealous of me. 7. I feel good whenever I see the ad for 2-wheeler on T.V., in a magazine or on a hoarding. 8. My vehicle gives me a comfortable ride. 9. I think 2-wheelers are a safe way to travel. 10. Three people should be legally allowed to travel on a 2-wheeler.
  • 10.
  • 11.
  • 12.
  • 13.
  • 14.
  • 15.
  • 16.
  • 17. Now we will attempt to interpret factor 2. We look in fig 4, down the column for Factor 2, and find that variables 8 and 9 have high loadings of 0.85203 and 0.87772, respectively. This indicates that factor 2 is a combination of these two variables. But if we look at fig. 2, the unrotated factor matrix, a slightly different picture emerges. Here, variable 3 also has a high loading on factor 2, along with variables 8 and 9. It is left to the researcher which interpretation he wants to use, as there are no hard and fast rules. Assuming we decide to use all three variables, the related statements are “low maintenance”, “comfort” and “safety” (from statements 3, 8 and 9). We may combine these variables into a factor called “utility” or “functional features” or any other similar word or phrase which captures the essence of these three statements / variables.
  • 18. For interpreting Factor 3, we look at the column labelled factor 3 in fig. 4 and find that variables 1 and 10 are loaded high on factor 3. According to the unrotated factor matrix of fig. 2, only variable 10 loads high on factor 3. Supposing we stick to fig. 4, then the combination of “affordability’ and “cost saving by 3 people legally riding on a 2-wheeler” give the impression that factor 3 could be “economy” or “low cost”. We have now completed interpretation of the 3 factors with eigen values of 1 or more. We will now look at some additional issues which may be of importance in using factor analysis.
  • 19. Additional Issues in Interpreting Solutions We must guard against the possibility that a variable may load highly on more than one factors. Strictly speaking, a variable should load close to 1.00 on one and only one factor, and load close to 0 on the other factors. If this is not the case, it indicates that either the sample of respondents have more than one opinion about the variable, or that the question/ variable may be unclear in its phrasing. The other issue important in practical use of factor analysis is the answer to the question ‘what should be considered a high loading and what is not a high loading?” Here, unfortunately, there is no clear-cut guideline, and many a time, we must look at relative values in the factor matrix. Sometimes, 0.7 may be treated as a high value, while sometimes 0.9 could be the cutoff for high values.
  • 20. The proportion of variance in any one of the original variables which is captured by the extracted factors is known as Communality. For example, fig. 3 tells us that after 3 factors were extracted and retained, the communality is 0.72243 for variable 1, 0.45214 for variable 2 and so on (from the column labelled communality in fig. 3). This means that 0.72243 or 72.24 percent of the variance (information content) of variable 1 is being captured by our 3 extracted factors together. Variable 2 exhibits a low communality value of 0.45214. This implies that only 45.214 percent of the variance in variable 2 is captured by our extracted factors. This may also partially explain why variable 2 is not appearing in our final interpretation of the factors (in the earlier section). It is possible that variable 2 is an independent variable which is not combining well with any other variable, and therefore should be further investigated separately. “Freedom” could be a different concept in the minds of our target audience. As a final comment, it is again the author’s recommendation that we use the rotated factor matrix (rather than unrotated factor matrix) for interpreting factors, particularly when we use the principal components method for extraction of factors in stage 1.
  • 21. Orthogonal Rotations • Varimax: Minimize the complexity of the components by making the large loadings larger and the small loadings smaller within each component. • Quartimax: Makes large loadings larger and small loadings smaller within each variable. • Equamax: A compromize between these two.

Editor's Notes

  1. 1