JOURNAL ARTICLE

Regression with Qualitative and Quantitative Variables: An Alternating Least Squares Method with Optimal Scaling Features

Forrest W. YoungJan de LeeuwYoshio Takane

Year: 1976 Journal:   Psychometrika Vol: 41 (4)Pages: 505-529   Publisher: Springer Science+Business Media

Abstract

A method is discussed which extends canonical regression analysis to the situation where the variables may be measured at a variety of levels (nominal, ordinal, or interval), and where they may be either continuous or discrete. There is no restriction on the mix of measurement characteristics (i.e., some variables may be discrete-ordinal, others continuous-nominal, and yet others discrete-interval). The method, which is purely descriptive, scales the observations on each variable, within the restriction imposed by the variable's measurement characteristics, so that the canonical correlation is maximal. The alternating least squares algorithm is discussed. Several examples are presented. It is concluded that the method is very robust. Inferential aspects of the method are not discussed.

Keywords:
Mathematics Ordinal data Canonical correlation Statistics Ordinal regression Regression analysis Interval (graph theory) Variable (mathematics) Level of measurement Variables Scaling Regression Econometrics Mathematical analysis Combinatorics

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