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Building generalized linear models with ultrahigh dimensional features: A sequentially conditional approach
Authors:Qi Zheng  Hyokyoung G Hong  Yi Li
Institution:1. Department of Bioinformatics and Biostatistics, University of Louisville, Louisville, Kentucky;2. Department of Statistics and Probability, Michigan State University, East Lansing, Michigan;3. Department of Biostatistics, University of Michigan, Ann Arbor, Michigan
Abstract:Conditional screening approaches have emerged as a powerful alternative to the commonly used marginal screening, as they can identify marginally weak but conditionally important variables. However, most existing conditional screening methods need to fix the initial conditioning set, which may determine the ultimately selected variables. If the conditioning set is not properly chosen, the methods may produce false negatives and positives. Moreover, screening approaches typically need to involve tuning parameters and extra modeling steps in order to reach a final model. We propose a sequential conditioning approach by dynamically updating the conditioning set with an iterative selection process. We provide its theoretical properties under the framework of generalized linear models. Powered by an extended Bayesian information criterion as the stopping rule, the method will lead to a final model without the need to choose tuning parameters or threshold parameters. The practical utility of the proposed method is examined via extensive simulations and analysis of a real clinical study on predicting multiple myeloma patients’ response to treatment based on their genomic profiles.
Keywords:extended Bayesian information criteria  high-dimensional predictors  predictive modeling  sequential conditioning  sure screening properties
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