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Full-Text Articles in Statistics and Probability
Classification Of High-Dimensional Data Based On Multiple Testing Methods, Chong Ma
Classification Of High-Dimensional Data Based On Multiple Testing Methods, Chong Ma
Theses and Dissertations
Supervised and unsupervised classification are common topics in machine learning in both scientific and industrial fields, which usually involve three tasks: prediction, exploration, and explanation. False discovery rate (FDR) theory has a close connection to classical classification theory, which must be employed in a sophisticated way to achieve good performance in various contexts. The study aims to explore novel supervised classifiers and unsupervised classification approaches for functional data and high-dimensional data in genome study by using FDR, respectively. One work develops a novel classifier for functional data by casting the classification problem into a multiple testing task, which involves using …