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Online Sparse Sliced Inverse Regression

30 September 2020
Jianjun Xu
Wenquan Cui
Haoyang Cheng
ArXiv (abs)PDFHTML
Abstract

Due to the demand for tackling the problem of streaming data with high dimensional covariates, we propose an online sparse sliced inverse regression (OSSIR) method for online sufficient dimension reduction. The existing online sufficient dimension reduction methods focus on the case when the dimension ppp is small. In this article, we show that our method can achieve better statistical accuracy and computation speed when the dimension ppp is large. There are two important steps in our method, one is to extend the online principal component analysis to iteratively obtain the eigenvalues and eigenvectors of the kernel matrix, the other is to use the truncated gradient to achieve online L1L_{1}L1​ regularization. We also analyze the convergence of the extended Candid covariance-free incremental PCA(CCIPCA) and our method. By comparing several existing methods in the simulations and real data applications, we demonstrate the effectiveness and efficiency of our method.

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