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Choosing the best set of variables in regression analysis using integer programming
Authors:Hiroshi Konno  Rei Yamamoto
Institution:(1) Department of Industrial and Systems Engineering, Chuo University, 2-13-27, Kasuga, Bunkyo-ku, Tokyo 112-8551, Japan;(2) Mitsubishi UFJ Trust Investment Technology Institute Co., Ltd, 2-5-6, Shiba, Minato-ku, Tokyo 105-0014, Japan
Abstract:This paper is concerned with an algorithm for selecting the best set of s variables out of k(> s) candidate variables in a multiple linear regression model. We employ absolute deviation as the measure of deviation and solve the resulting optimization problem by using 0-1 integer programming methodologies. In addition, we will propose a heuristic algorithm to obtain a close to optimal set of variables in terms of squared deviation. Computational results show that this method is practical and reliable for determining the best set of variables.
Keywords:Linear regression  Least absolute deviation  Variable selection  Cardinality constraint  0-1 integer programming
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