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Detecting influential observations in Liu and modified Liu estimators
Authors:Hasan Ertas  Selahattin Kaciranlar
Institution:1. Faculty of Arts and Sciences, Department of Statistics , Artvin ?oruh University , Artvin , Turkey;2. Faculty of Arts and Sciences, Department of Statistics , ?ukurova University , Adana , Turkey
Abstract:In regression, detecting anomalous observations is a significant step for model-building process. Various influence measures based on different motivational arguments are designed to measure the influence of observations through different aspects of various regression models. The presence of influential observations in the data is complicated by the existence of multicollinearity. The purpose of this paper is to assess the influence of observations in the Liu 9] and modified Liu 15] estimators by using the method of approximate case deletion formulas suggested by Walker and Birch 14]. A numerical example using a real data set used by Longley 10] and a Monte Carlo simulation are given to illustrate the theoretical results.
Keywords:influential observations  diagnostics  multicollinearity  Liu estimator  modified Liu estimator
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