Interaction-Based Learning for High-Dimensional Data with Continuous Predictors

Interaction-Based Learning for High-Dimensional Data with Continuous Predictors
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ISBN-10 : OCLC:947030664
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Book Synopsis Interaction-Based Learning for High-Dimensional Data with Continuous Predictors by :

Download or read book Interaction-Based Learning for High-Dimensional Data with Continuous Predictors written by and published by . This book was released on 2014 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: The method is inspired by Lo and Zheng's earlier work (2002) on detecting interactions for discrete predictors. We apply a backward elimination algorithm based on this measure which leads to the identification of many in influential clusters of variables. Those identified groups of variables can capture both marginal and interactive effects. Second, each identified cluster has the potential to perform predictions and classifications more accurately. We also study procedures how to combine these groups of individual classifiers to form a final predictor. Through simulation and real data analysis, the proposed measure is capable of identifying important variable sets and patterns including higher-order interaction sets. The proposed procedure outperforms existing methods in three different microarray datasets. Moreover, the nonparametric measure is quite flexible and can be easily extended and applied to other areas of high-dimensional data and studies.


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