[5-24]Latent Representations for Information Retrieval
文章來源: | 發布時間:2016-05-20 | 【打印】 【關閉】
學術報告:Latent Representations for Information Retrieval
報告人:聶建云 教授(加拿大蒙特利爾大學)
時 間:2016年5月24日(周二) 上午10:30~11:30
地 點:軟件所5號樓四層第二會議室
報告摘要:
Traditional information retrieval uses words as the basic representation units. It is known that such a representation has several problems, in particular, when dealing with synonymous and polysemous words. These problems are particularly important for information retrieval. A series of latent representations have been used to address the problems, ranging from LSA, LDA to more recent embeddings. In this talk, we will review these representations for IR applications. It will be shown that latent representations can help solve the problems to some extent, but cannot (yet) fully replace the traditional word-based representation. We will provide some analysis on this.
報告人簡介:
Jian-Yun Nie is a professor in University of Montreal. He obtained his PhD from University of Grenoble (France) on information retrieval. Since then, his research has always been focused on information retrieval and natural language processing. Among other topics, he has worked on IR models, cross-language IR, query expansion and query understanding. Jian-Yun Nie has published a number of papers on these topics and his papers have been widely cited. He published a monograph on cross-language information retrieval (Morgan and Claypool, 2010). He is on editorial board of several international journals, and is a regular PC member of the major conferences in these areas (SIGIR, CIKM, ACL, etc.). He has also been the general chair of SIGIR conference in 2011 held in Beijing.