Title: Gini’s Multiple Regressions: Two Approaches and Their Interaction
Abstract: Our target in this chapter is to illustrate one of the major advantages of the GMD regressions: they offer a complete framework for checking and dealing with some of the assumptions imposed on the data in a multiple regression problem. There are two approaches that are related to the Gini—the semi-parametric approach and the minimization approach. The interaction between the two gives tools for assessing the adequacy of the model. In addition, there are two tools that enable the researcher to investigate the curvature of the regression curve: the extended Gini regression and the NLMA curve. The basic idea is the following: there is an unknown regression curve that relates the dependent variable Y and (all or some out of) a set of explanatory variables X1,…,Xn. The shape of the curve is not known. The curve is approximated by a linear model (which is then estimated from the data). However, each approach mentioned above leads to a (possibly different) linear model. The interaction between the two approaches can help to decide whether the original curve is linear (in each individual explanatory variable) or not. The suggested stages are the following: first one estimates the regression coefficients according to the semi-parametric approach without specifying a linear model. This means that at this stage the researcher decides only on the set of explanatory variables to be included in the regression model but not on the functional form. Then one uses the residuals from the fitted curve and tests whether they fulfill the necessary conditions for the minimization approach (which were obtained assuming linearity) for each explanatory variable separately. If for any given explanatory variable the above conditions are fulfilled; that is, if the hypothesis that the two regression coefficients are equal is not rejected, then one concludes that the regression curve is linear in this variable. Otherwise it is not (see Chap. 7 for details or below for a brief review). This property is especially important in regressions with several explanatory variables. It enables the investigator to find a set of variables that allows linear predictions without having to commit to the linearity of the model as a whole. Provided that the linearity hypothesis is not rejected for all explanatory variables one can examine the properties of the residuals such as their distribution, whether it is symmetric around the regression line or not, the serial correlation between them, etc., using the methodologies that will keep the analysis under the Gini framework. Although each stage could be performed by alternative methods, we are not aware of any methodology that can offer a complete set of tests that is governed by a unified framework and therefore offers a method to test the assumptions behind the regression with an internal consistency. We note in passing that the suggested test for linearity does not require replications of observations, as is the case in the common tests for linearity.
Publication Year: 2012
Publication Date: 2012-08-25
Language: en
Type: book-chapter
Indexed In: ['crossref']
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Cited By Count: 8
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