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A weighted random forests approach to improve predictive performance
Author(s) -
Winham Stacey J.,
Freimuth Robert R.,
Biernacka Joanna M.
Publication year - 2013
Publication title -
statistical analysis and data mining: the asa data science journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.381
H-Index - 33
eISSN - 1932-1872
pISSN - 1932-1864
DOI - 10.1002/sam.11196
Subject(s) - random forest , computer science , trait , tree (set theory) , data mining , machine learning , artificial intelligence , mathematics , mathematical analysis , programming language
Abstract Identifying genetic variants associated with complex disease in high‐dimensional data is a challenging problem, and complicated etiologies such as gene–gene interactions are often ignored in analyses. The data‐mining method random forests (RF) can handle high dimensions; however, in high‐dimensional data, RF is not an effective filter for identifying risk factors associated with the disease trait via complex genetic models such as gene–gene interactions without strong marginal components. In this article we propose an extension called weighted random forests (wRF), which incorporates tree‐level weights to emphasize more accurate trees in prediction and calculation of variable importance. We demonstrate through simulation and application to data from a genetic study of addiction that wRF can outperform RF in high‐dimensional data, although the improvements are modest and limited to situations with effect sizes that are larger than what is realistic in genetics of complex disease. Thus, the current implementation of wRF is unlikely to improve detection of relevant predictors in high‐dimensional genetic data, but may be applicable in other situations where larger effect sizes are anticipated. © 2013 Wiley Periodicals, Inc. Statistical Analysis and Data Mining, 2013

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