专题研讨与学术报告

专题研讨与学术报告

当前位置: 首页 > 专题研讨与学术报告 > 正文
西安统计与数据科学论坛第三场报告通知
日期:2020-10-09 点击:

讲座人: Jian Kang 教授,University of Michigan

讲座题目Bayesian network marker selection via the thresholded graph Laplacian Gaussian prior

讲座时间2020年10月14日,星期三,10:00-12:00

讲座简介

Selecting network markers becomes increasingly important in imaging and genomics. Most existing methods focus on the local network structure and incur heavy computational costs for the large-scale problem. In this talk, I will introduce a novel prior model for Bayesian network marker selection in the generalized linear model (GLM) framework: the Thresholded Graph Laplacian Gaussian (TGLG) prior, which adopts the graph Laplacian matrix to characterize the conditional dependence between neighboring markers accounting for the global network structure. Under mild conditions, we show the proposed model enjoys the posterior consistency with a diverging number of edges and nodes in the network. We also develop a Metropolis-adjusted Langevin algorithm (MALA) for efficient posterior computation, which is scalable to large-scale networks. We illustrate the superiorities of the proposed method compared with existing alternatives via extensive simulation studies and real data analyses.

讲座人简介

Dr. Jian Kang is a Professor of Biostatistics at the University of Michigan. His main research interests are developing statistical methods and theory for large-scale complex data analysis with focuses on Bayesian models, machine learning, imaging and metabolomics. He has over 70 publications in leading statistical journals and medical journals. Dr. Kang currently serves as the Associate Editor of the Journal of the American Statistical Association, Biometrics and Statistics in Medicine.

 

姜丹丹 邀请您参加腾讯会议

会议主题:姜丹丹预定的会议

会议时间:2020/9/23 10:00-12:00

重复周期:每周(周三)

点击链接入会,或添加至会议列表:

https://meeting.tencent.com/s/PcH87shrJ6Ng

 

会议 ID:409 8118 5814

会议密码:214257

 

手机一键拨号入会

+8675536550000,,40981185814# (中国大陆)

+85230018898,,,2,40981185814# (中国香港)

 

根据您的位置拨号

+8675536550000 (中国大陆)

+85230018898 (中国香港)

 

版权所有:西安交通大学数学与数学技术研究院  设计与制作:西安交通大学数据与信息中心
地址:陕西省西安市碑林区咸宁西路28号  邮编:710049