Model-Free Variable Selection With Matrix-Valued Predictors

We introduce a novel framework for model-free variable selection with matrix-valued predictors. To test the importance of rows, columns, and submatrices of the predictor matrix in terms of predicting the response, three types of hypotheses are formulated under a unified framework. The asymptotic pro...

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Hauptverfasser: Li, Zeda, Dong, Yuexiao
Format: Dataset
Sprache:eng
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Zusammenfassung:We introduce a novel framework for model-free variable selection with matrix-valued predictors. To test the importance of rows, columns, and submatrices of the predictor matrix in terms of predicting the response, three types of hypotheses are formulated under a unified framework. The asymptotic properties of the test statistics under the null hypothesis are established and a permutation testing algorithm is also introduced to approximate the distribution of the test statistics. A maximum ratio criterion (MRC) is proposed to facilitate the model-free variable selection. Unlike the traditional stepwise regression procedures that require calculating p-values at each step, the MRC is a noniterative procedure that does not require p-value calculation and is guaranteed to achieve variable selection consistency under mild conditions. Performance of the proposed method is evaluated in extensive simulations and demonstrated through the analysis of an electroencephalography data. Supplementary materials for this article are available online.
DOI:10.6084/m9.figshare.12844505