Title of article :
Hunting for significance: Bayesian classifiers under a mixture loss function
Author/Authors :
Kenichi Fuki، نويسنده , , Igar and Brown، نويسنده , , Lawrence and Han، نويسنده , , Xu and Zhao، نويسنده , , Linda، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
10
From page :
62
To page :
71
Abstract :
Detecting significance in a high-dimensional sparse data structure has received a large amount of attention in modern statistics. In the current paper, we introduce a compound decision rule to simultaneously classify signals from noise. This procedure is a Bayes rule subject to a mixture loss function. The loss function minimizes the number of false discoveries while controlling the false nondiscoveries by incorporating the signal strength information. Based on our criterion, strong signals will be penalized more heavily for nondiscovery than weak signals. In constructing this classification rule, we assume a mixture prior for the parameter which adapts to the unknown sparsity. This Bayes rule can be viewed as thresholding the “local fdr” (Efron, 2007) by adaptive thresholds. Both parametric and nonparametric methods will be discussed. The nonparametric procedure adapts to the unknown data structure well and outperforms the parametric one. Performance of the procedure is illustrated by various simulation studies and a real data application.
Keywords :
High dimensional sparse inference , Nonparametric estimation , False discoveries , Bayes classification rule , False nondiscoveries
Journal title :
Journal of Statistical Planning and Inference
Serial Year :
2014
Journal title :
Journal of Statistical Planning and Inference
Record number :
2222693
Link To Document :
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