Factor analysis is a statistical technique used to explain variability among observed random variables in terms of fewer unobserved random variables called factors. The observed variables are modeled as linear combinations of the factors, plus "error" terms. Factor analysis originated in psychometrics, and is used in social sciences, marketing, product management, operations research, and other applied sciences that deal with large quantities of data.
This oversimplified example should not be taken to be realistic.
Suppose a psychologist proposes a theory that there are two kinds of intelligence, "verbal intelligence" and "mathematical intelligence". Evidence for the theory is sought in the examination scores of 1000 students in each of 10 different academic fields. If a student is chosen randomly from a large population, then the student's 10 scores are random variables. The psychologist's theory may say that the average score in each of the 10 subjects for students with a particular level of verbal intelligence and a particular level of mathematical intelligence is a certain number times the level of verbal intelligence plus a certain number times the level of mathematical intelligence, i.e., it is a linear combination of those two "factors". The numbers by which the two "intelligences" are multiplied are posited by the theory to be the same for all students, and are called "factor loadings". For example, the theory may hold that the average student's aptitude in the field of amphibology is
The numbers 10 and 6 are the factor loadings associated with amphibology. Other academic subjects may have different factor loadings.
Two students having identical degrees of verbal intelligence and identical degrees of mathematical intelligence may have different aptitudes in amphibology because individual aptitudes differ from average aptitudes. That difference is called the "error" — an unfortunate misnomer in statistics that means the amount by which an individual differs from what is average (see errors and residuals in statistics).
The observable data that go into factor analysis would be 10 scores of each of the 1000 students, a total of 10,000 numbers. The factor loadings and levels of the two kinds of intelligence of each student must be inferred from the data. Even the number of factors (two, in this example) must be inferred from the data.
In the example above, for i = 1, ..., 1,000 the ith student's scores are
where
In matrix notation, we have
where
Observe that by doubling the scale on which "verbal intelligence"—the first component in each column of F—is measured, and simultaneously halving the factor loadings for verbal intelligence makes no difference to the model. Thus, no generality is lost by assuming that the standard deviation of verbal intelligence is 1. Likewise for mathematical intelligence. Moreover, for similar reasons, no generality is lost by assuming the two factors are uncorrelated with each other. The "errors" ε are taken to be independent of each other. The variances of the "errors" associated with the 10 different subjects are not assumed to be equal.
The values of the loadings L, the averages μ, and the variances of the "errors" ε must be estimated given the observed data X. this is done is a subject that must get addressed in this article, which remains "under construction".
Charles Spearman pioneered the use of factor analysis in the field of psychology and is sometimes credited with the invention of factor analysis. He discovered that schoolchildren's scores on a wide variety of seemingly unrelated subjects were positively correlated, which led him to postulate that a general mental ability, or g, underlies and shapes human cognitive performance. His postulate now enjoys broad support in the field of intelligence research, where it is known as the g theory.
Raymond Cattell expanded on Spearman’s idea of a two-factor theory of intelligence after performing his own tests and factor analysis. He used a multi-factor theory to explain intelligence. Cattell’s theory addressed alternate factors in intellectual development, including motivation and psychology. Cattell also developed several mathematical methods for adjusting psychometric graphs, such as his "scree" test and similarity coefficients. His research lead to the development of his theory of fluid and crystallized intelligence. Cattell was a strong advocate of factor analysis and psychometrics. He believed that all theory should be derived from research, which supports the continued use of empirical observation and objective testing to study human intelligence.
The basic steps are:
The data collection stage is usually done by marketing research professionals. Survey questions ask the respondent to rate a product sample or descriptions of product concepts on a range of attributes. Anywhere from five to twenty attributes are chosen. They could include things like: ease of use, weight, accuracy, durability, colourfulness, price, or size. The attributes chosen will vary depending on the product being studied. The same question is asked about all the products in the study. The data for multiple products is coded and input into a statistical program such as SPSS or SAS.
Note that there are very important conceptual differences between the two approaches, an important one being that the common factor model involves a testable model whereas principal components does not. This is due to the fact that in the common factor model, unique variables are required to be uncorrelated, whereas residuals in principal components are correlated. Finally, components are not latent variables; they are linear combinations of the input variables, and thus determinate. Factors, on the other hand, are latent variables, which are indeterminate. If your goal is to fit the variances of input variables for the purpose of data reduction, you should carry out principal components analysis. If you want to build a testable model to explain the intercorrelations among input variables, you should carry out a factor analysis.
The use of principal components in a semantic space can vary somewhat because the components may only "predict" but not "map" to the vector space. This produces a statistical principal component use where the most salient words or themes represent the preferred basis.
Psychometrics | Statistics | Marketing research | Product management | Consumer behaviour | Marketing | Educational psychology
Faktorenanalyse | Vikipedio:Projekto matematiko/Faktora analitiko | Analyse factorielle des correspondances | Factoranalyse | 因子分析 | Analiza czynnikowa | Analisis faktor
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