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CSDA
2004

Variable selection bias in regression trees with constant fits

13 years 4 months ago
Variable selection bias in regression trees with constant fits
The greedy search approach to variable selection in regression trees with constant fits is considered. At each node, the method usually compares the maximally selected statistic associated with each variable and selects the variable with the largest value to form the split. This method is shown to have selection bias, if predictor variables have different numbers of missing values and the bias can be corrected by comparing the corresponding P-values instead. Methods related to some change-point problems are used to compute the P-values and their performances are studied. keyword: change-point; maximally selected statistic; missing values; P-values
Yu-Shan Shih, Hsin-Wen Tsai
Added 17 Dec 2010
Updated 17 Dec 2010
Type Journal
Year 2004
Where CSDA
Authors Yu-Shan Shih, Hsin-Wen Tsai
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