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Dimension reduction boosting
Authors:Junlong Zhao  Xiuli Zhao
Institution:1. School of Statistics, Beijing Normal University, Beijing, China;2. Ant Financial Services Group, Hangzhou, China
Abstract:L2Boosting is an effective method for constructing model. In the case of high-dimensional setting, Bühlmann and Yu (2003 Bühlmann, P., Yu, B. (2003). Boosting with the L2-loss: regression and classification. J. Amer. Stat. Assoc. 98:324339.Taylor &; Francis Online], Web of Science ®] Google Scholar]) proposed the componentwise L2Boosting, but componentwise L2Boosting can only fit a special limited model. In this paper, by combining a boosting and sufficient dimension reduction method, e.g., sliced inverse regression (SIR), we propose a new method for regression, called dimension reduction boosting (DRBoosting). Compared with L2Boosting, the computation of DRBoosting is less intensive and its prediction is better, especially for high-dimensional data. Simulations confirm the advantage of the new method.
Keywords:Conjugate direction boosting  dimension reduction  L2Boosting  sliced inverse regression
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