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演講公告

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Bayesian structure selection approaches for multiple binary responses via multi-task learning

Abstract

In this work, we concentrate on the Bayesian structure selection problems for the categorical response. We focus on solving the selection problem for multiple binary responses and use the probit model for each response. Here, we consider the group structure with sparsity property on the rows of coefficient matrix where each row corresponds to one variable. Then we identify the relevant variables for the responses and the selection problems can be treated as the multi-task learning problem. The effectiveness of our proposed method will be demonstrated through simulation studies.

Keyword: Multi-task learning, component-wise algorithm, group structure, Markov chain Monte Carlo
 
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1130506 Prof. Chi-Hsiang Chu ( 朱基祥 助理教授 ).pdf
最後更新日期:2024-04-29 14:29
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