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Estimating a sparse reduction for general regression in high dimensions
Authors:Tao Wang  Mengjie Chen  Hongyu Zhao  Lixing Zhu
Institution:1.Department of Bioinformatics and Biostatistics,Shanghai Jiao Tong University,Shanghai,China;2.Department of Biostatistics,Yale University,New Haven,USA;3.Department of Biostatistics,University of North Carolina,Chapel Hill,USA;4.Department of Mathematics,Hong Kong Baptist University,Kowloon Tong,Hong Kong
Abstract:Although the concept of sufficient dimension reduction that was originally proposed has been there for a long time, studies in the literature have largely focused on properties of estimators of dimension-reduction subspaces in the classical “small p, and large n” setting. Rather than the subspace, this paper considers directly the set of reduced predictors, which we believe are more relevant for subsequent analyses. A principled method is proposed for estimating a sparse reduction, which is based on a new, revised representation of an existing well-known method called the sliced inverse regression. A fast and efficient algorithm is developed for computing the estimator. The asymptotic behavior of the new method is studied when the number of predictors, p, exceeds the sample size, n, providing a guide for choosing the number of sufficient dimension-reduction predictors. Numerical results, including a simulation study and a cancer-drug-sensitivity data analysis, are presented to examine the performance.
Keywords:
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