Estimated Parameters Do Not Get the "Wrong Sign" Due to Collinearity Across Included Variables

14 Pages Posted: 20 Feb 2003

See all articles by Philip Hans Franses

Philip Hans Franses

Erasmus University Rotterdam (EUR) - Department of Econometrics

Christiaan Heij

Erasmus University Rotterdam (EUR) - Department of Econometrics

Date Written: June 2002 3,

Abstract

Estimation results in linear regression models are sometimes in contrast with what was expected on the basis of a certain set of hypotheses or theory, in the sense that one or more parameters have the "wrong sign". One could be inclined to think that this is due to collinearity across explanatory variables, suggesting one should leave out one or more of the collinear variables. In this note we show that this is not a valid approach. Additionally, we show that "wrong signs" can occur because of correlations between included and omitted variables, so that "wrong signs" may occur if the model is not correctly specified. That is, if we find 'wrong signs" we should start questioning our model choice, not the data.

Keywords: misspecification, collinearity, parameter estimation

JEL Classification: M, M31, C44, M52

Suggested Citation

Franses, Philip Hans and Heij, Christiaan, Estimated Parameters Do Not Get the "Wrong Sign" Due to Collinearity Across Included Variables (June 2002 3,). Available at SSRN: https://ssrn.com/abstract=370971

Philip Hans Franses (Contact Author)

Erasmus University Rotterdam (EUR) - Department of Econometrics ( email )

P.O. Box 1738
3000 DR Rotterdam
Netherlands
+31 10 408 1278 (Phone)
+31 10 408 9162 (Fax)

Christiaan Heij

Erasmus University Rotterdam (EUR) - Department of Econometrics ( email )

P.O. Box 1738
3000 DR Rotterdam
Netherlands

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