操龙兵教授学术报告会

发布时间:2019-07-04

报告题目:Statistical Learning of Large-scale, Sparse and Multi-source data

报 告 人:操龙兵 教授

报告时间:201974日(周四)下午 14:30

报告地点:安徽大学磬苑校区理工D312会议室

Real-life big data is often very large, sparse, and multi-sourced. Such big data challenges widely appear in almost all big data applications including finance, communications, e-commerce, and social networks. Traditional statistical learning methods face significant problems because of the intensive mathematical computation and inference required. A recent direction in statistical learning is to develop efficient statistical methods to learn complex big data, requiring handling the bigness, high sparsity, heterogeneity and coupling in both observable and hidden spaces. Accordingly, this talk introduces some new statistical models for tackling such challenges on large, sparse and multi-source data with efficient Bayesian inference methods, in addition to its applications to large-scale and sparse recommendation and some new directions of statistically learning complex big data problems.

主办单位:计算机科学与技术学院

欢迎各位老师、同学届时前往!

科学技术处

  201974


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