• beat365
  • 經管郵箱
  • 教職工内網
  • 用戶登錄
  • EN

美國Rutgers新澤西州立大學副教授熊輝:Efficient Discovery of Confounders in Large Data Sets

2010-04-29
閱讀:

【主講】熊輝,美國Rutgers新澤西州立大學副教授

【主題】Efficient Discovery of Confounders in Large Data Sets

【時間】2010-5-6(周四)10:30-12:00

【地點】清華經管學院偉倫樓453室

【語言】英文

【主辦】beat365現代管理研究中心

beat365管理科學工程系

報告摘要

Given a large transaction database, association analysis is concerned with efficiently finding strongly related objects. Unlike traditional associate analysis, where relationships among variables are searched at a global level, we examine confounding factors at a local level. Indeed, many real-world phenomena are localized to specific regions and times. These relationships may not be visible when the entire data set is analyzed. Specially, confounding effects that change the direction of correlation is the most significant. Along this line, we propose to efficiently find confounding effects attributable to local associations. Specifically, we derive an upper bound by a necessary condition of confounders, which can help us prune the search space and efficiently identify confounders. Experimental results show that the proposed CONFOUND algorithm can effectively identify confounders and the computational performance is an order of magnitude faster than benchmark methods.

個人簡曆

Dr. Hui Xiong received his Ph.D. from theUniversityofMinnesota. He is currently an Associate Professor atRutgersUniversity, where he received a two-year early promotion/tenure (2009), the Rutgers University Board of Trustees Research Fellowship for Scholarly Excellence (2009), an IBM ESA Innovation Award (2008), the Junior Faculty Teaching Excellence Award (2007) and the Junior Faculty Research Award (2008) at theRutgersBusinessSchool. His general area of research is data and knowledge engineering, with a focus on developing effective and efficient data analysis techniques for emerging data intensive business applications. He is an Associate Editor of the Knowledge and Information Systems journal. He has served regularly in the organization committees and the program committees of a number of international conferences and workshops. More detailed information is available athttp://datamining.rutgers.edu.