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  <title><![CDATA[ML@GT Seminar by Yao Xie]]></title>
  <body><![CDATA[<p>Abstract: Change-point detection is a classic statistical framework for detecting a change in the distribution&nbsp;of a sequence of data. In this talk, I will focus on its connection with machine learning and anomaly&nbsp;detection, and illustrate by our two recent work along this direction. While classic change-point detection&nbsp;usually assumes i.i.d. data and parametric forms of the data distributions, when dealing with machine&nbsp;learning problems we may need to go beyond these settings. The first work considers detecting a change in a&nbsp;network where one observes a sequence of correlated discrete events on the nodes. The second work&nbsp;presents a distribution-free kernel based method leveraging minimum mean discrepancy (MMD) statistic.&nbsp;The common themes are to construct detection statistics that are suitable for machine learning tasks and to&nbsp;control the false alarm rate via a powerful change-of-measure technique. This is a joint work with Shuang Li,&nbsp;Le&nbsp;Song, Mehrdad Farajtba and Apart Verma.<br />
<br />
Bio: Yao Xie is an Assistant Professor in the H. Milton Stewart School of Industrial and Systems&nbsp;Engineering, Georgia Institute of Technology. She received her Ph.D. in Electrical Engineering (minor in&nbsp;Mathematics) from Stanford University in 2011. Prior joining Georgia Tech, she worked as a Research&nbsp;Scientist at Duke University. Her research areas include computational statistics, signal processing, and&nbsp;machine learning, in providing theoretical insights, developing computationally efficient and statistically&nbsp;powerful algorithms for various application, including sensor networks, social networks, imaging, material&nbsp;science, geophysics, communications. She received a Best Student Paper Award at Annual Asilomar&nbsp;Conference on Signals, Systems and Computers in 2005, Finalist of Best Student Paper Award in ICASSP&nbsp;Conference in 2007, and the National Science Foundation (NSF) CAREER Award in 2017.</p>
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