In Top-Down Decisions, Weighting Variables does Not Matter: A Consequence of Wilks' Theorem

It is often appropriate to weight variables to form a composite for making decisions. Examples include selection systems, organizational performance criteria, test items, and decision modeling. Frequently, criterion-based regression-weighting is employed, but a sizable literature argues for unit or simple weighting. Wainer demonstrated small loss from equal weights compared to regression weights. Usually, weights are of little importance for rank ordering, echoing Wainer's "it don't make no nevermind." Wilks proved a general theorem, that under common circumstances, almost all weighted composites of a set of variables are highly correlated. That is, if a single set of variables is weighted two different ways to form two composites, the expected correlation for the two composites is very high. The authors demonstrate the effect of Wilks' theorem through illustrative examples. Implications of Wilks' theorem are discussed. When top-down decisions are made, weighting variables does not matter because the rank ordering remains almost constant.

[1]  R. Dawes,et al.  Linear models in decision making. , 1974 .

[2]  Nambury S. Raju,et al.  A Comparison of Five Methods for Combining Multiple Criteria into a Single Composite , 1982 .

[3]  The MCMI-II: How Much Better Than the MCMI? , 1989 .

[4]  P. G. Roth,et al.  Accounting for nonlinear utility functions in composite measures of productivity and performance , 1991 .

[5]  J. Stalnaker Weighting questions in the essay-type examination. , 1938 .

[6]  S. S. Wilks Weighting systems for linear functions of correlated variables when there is no dependent variable , 1938 .

[7]  James E. Laughlin,et al.  Comment on "Estimating coefficients in linear models: It don't make no nevermind." , 1978 .

[8]  R. Dawes Judgment under uncertainty: The robust beauty of improper linear models in decision making , 1979 .

[9]  Malcolm James Ree,et al.  The stability of g across different methods of estimation , 1991 .

[10]  Toni G. Wegner,et al.  Correcting Differences in Answer Sheets for the 1980 Armed Services Vocational Aptitude Battery Reference Population , 1990 .

[11]  Michael G. Aamodt,et al.  Comparison of Four Methods for Weighting Multiple Predictors , 1985 .

[12]  A. Jensen,et al.  What is a good g , 1994 .

[13]  Thomas R. Carretta,et al.  Understanding the Relations Between Selection Factors and Pilot Training Performance: Does the Criterion Make a Difference? , 1992 .

[14]  Howard Wainer,et al.  On the sensitivity of regression and regressors. , 1978 .

[15]  L. Aiken ANOTHER LOOK AT WEIGHTING TEST ITEMS , 1966 .

[16]  Thomas R. Carretta,et al.  Factor Analysis of the Asvab: Confirming a Vernon-Like Structure , 1994 .

[17]  Howard Wainer,et al.  Estimating Coefficients in Linear Models: It Don't Make No Nevermind , 1976 .

[18]  R. Rahe Life change measurement clarification. , 1978, Psychosomatic medicine.

[19]  Frank L. Schmidt,et al.  The Relative Efficiency of Regression and Simple Unit Predictor Weights in Applied Differential Psychology , 1971 .

[20]  V. Kumar,et al.  A Decision Support System for Prioritizing Oil and Gas Exploration Activities , 1990, Oper. Res..

[21]  C. H. Lawshe,et al.  The Relative Efficiency of four Test Weighting Methods in Multiple Prediction , 1959 .

[22]  R. Hogarth,et al.  Unit weighting schemes for decision making , 1975 .

[23]  C. Burt THE INFLUENCE OF DIFFERENTIAL WEIGHTING , 1950 .

[24]  Malcolm James Ree,et al.  The Predictive Validity of the Asvab for Training Grades , 1992 .

[25]  William H. Glick,et al.  The job characteristics approach to task design: A critical review. , 1981 .

[26]  Differential weights in life change research: useful or irrelevant? , 1980, Psychosomatic medicine.

[27]  L. Guttman The Irrelevance of Factor Analysis for the Study of Group Differences. , 1992, Multivariate behavioral research.

[28]  Nambury S. Raju,et al.  Methodology Review: Estimation of Population Validity and Cross-Validity, and the Use of Equal Weights in Prediction , 1997 .