报告题目:The Control of the False Discovery Rate under Structured Hypotheses
报 告 人: 郭文革 教授(美国新泽西工学院)
报告时间: 2014年1月9日15:30
报告地点: 南一楼中311会议室
邀 请 方:“多谱信息处理技术”国家级重点实验室
报告摘要:
The hypotheses in many multiple testing problems have some natural structure based on prior knowledge such as Gene Ontology in gene expression data. However, few false discovery rate (FDR) controlling procedures take advantage of this natural structure. In this talk, we introduce new FDR controlling procedures which account for the structural information of the tested hypotheses. The first structure we examine is when all hypotheses have been ordered beforehand. We firstly develop conventional fixed sequence FDR controlling procedures which stop on the first acceptance. Then, we extend the method and develop procedures which stop on the kth acceptance. Simulation studies and real data analysis show that the newly developed procedures can be a powerful alternative to the existing Benjamini-Hochberg and Benjamini-Yekutieli procedures. If time is allowed, we discuss the testing of hierarchically ordered hypotheses where hypotheses are arranged in a tree-like structure and introduce new hierarchical FDR controlling procedures under different dependence configurations.
报告人简介:
Wenge Guo is currently an Assistant Professor of Statistics in the Department of Mathematical Sciences at the New Jersey Institute of Technology. Before coming to New Jersey, he worked as a Research Fellow at the National Institute of Environmental Health Sciences for two years. he received his Ph.D. in System Engineering and Biostatistics from Huazhong University of Science and Technology and the University of Cincinnati, respectively. His research interests include: Large-scale multiple testing, High-dimensional data analysis, Bioinformatics, Machine learning, Statistical methods for clinical trials.