Lise Getoor

Lise Getoor

Photo was taken in 2011
Born Seattle, WA
Residence Santa Cruz, California
Citizenship American
Nationality American
Fields Computer Science, Machine Learning, Data Mining, and Statistical relational learning
Institutions University of California, Santa Cruz, and University of Maryland, College Park
Alma mater Stanford University
Doctoral advisor Daphne Koller
Other academic advisors Stuart Russell
Known for Statistical relational learning, Link mining, Probabilistic soft logic
Website
getoor.soe.ucsc.edu

Lise Getoor is a professor in the Computer Science Department,[1] at the University of California, Santa Cruz,[2] and an adjunct professor in the Computer Science Department[3] at the University of Maryland, College Park.[4] Her primary research interests are in machine learning and reasoning with uncertainty, applied to graphs and structured data. She also works in data integration, social network analysis and visual analytics. She has multiple best paper awards, an NSF Career Award, and is an Association for the Advancement of Artificial Intelligence (AAAI) Fellow.[5] She has edited a book on Statistical relational learning that is a main reference in this domain.[6] She has published many highly cited papers in academic journals and conference proceedings.[7][8][9][10] She has also served as action editor for the Machine Learning Journal, JAIR associate editor, and TKDD associate editor. She is a board member of the International Machine Learning Society, has been a member of AAAI Executive council, was PC co-chair of ICML 2011, and has served as senior PC member for conferences including AAAI, ICML, IJCAI, ISWC, KDD, SIGMOD, UAI, VLDB, WSDM and WWW.

She received her Ph.D. from Stanford University,[11] her M.S. from UC Berkeley, and her B.S. from UC Santa Barbara. Prior to joining University of California, Santa Cruz, she was a professor at the University of Maryland, College Park until Nov 2013.[12]

References

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