報 告 人：沈韡凝 博士
報告時間：2019年9月26日 15:00 - 16:00
邀 請 人：謝 江 博士
Modern scientific applications have generated many data sets of complex nature, such as high dimensionality, heterogeneity and unknown structure of interest. In this talk, I will discuss a few ideas on extending classical statistical methods such as regression, the principal component analysis, expectation maximization, and mixture model, to accommodate challenges in those applications. Theoretical properties, numerical results, and applications in biomedical studies will be discussed.
Weining Shen is an assistant professor of Statistics at University of California, Irvine. He received his PhD from North Carolina State University in 2013, and his thesis won the Leonard J. Savage Dissertation Award. In 2013-2015, he was a postdoctoral fellow in Department of Biostatistics, M.D. Anderson Cancer Center. Prof. Shen’s research interest includes Bayesian methods, high-dimensional models, and applications in neuroscience, biology and disease studies.