Biased Adjusted Poisson Ridge Estimators-Method and Application

Iran J Sci Technol Trans A Sci. 2020;44(6):1775-1789. doi: 10.1007/s40995-020-00974-5. Epub 2020 Oct 3.

Abstract

Månsson and Shukur (Econ Model 28:1475-1481, 2011) proposed a Poisson ridge regression estimator (PRRE) to reduce the negative effects of multicollinearity. However, a weakness of the PRRE is its relatively large bias. Therefore, as a remedy, Türkan and Özel (J Appl Stat 43:1892-1905, 2016) examined the performance of almost unbiased ridge estimators for the Poisson regression model. These estimators will not only reduce the consequences of multicollinearity but also decrease the bias of PRRE and thus perform more efficiently. The aim of this paper is twofold. Firstly, to derive the mean square error properties of the Modified Almost Unbiased PRRE (MAUPRRE) and Almost Unbiased PRRE (AUPRRE) and then propose new ridge estimators for MAUPRRE and AUPRRE. Secondly, to compare the performance of the MAUPRRE with the AUPRRE, PRRE and maximum likelihood estimator. Using both simulation study and real-world dataset from the Swedish football league, it is evidenced that one of the proposed, MAUPRRE ( k ^ q 4 ) performed better than the rest in the presence of high to strong (0.80-0.99) multicollinearity situation.

Keywords: Maximum likelihood estimator; Mean square error; Modified almost unbiased ridge estimators; Multicollinearity; Poisson ridge regression.