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Breakout Session (B2) Machine Learning, Data Mining and Behavior Modeling

Breakout Session (B2) Machine Learning, Data Mining and Behavior Modeling. Moderators: Narayanan C Krishnan, WSU and Qiang Yang, Hong Kong UST. B2 Machine learning/behavior modeling, data mining . Facilitators/Scribes:

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Breakout Session (B2) Machine Learning, Data Mining and Behavior Modeling

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  1. Breakout Session (B2)Machine Learning, Data Mining and Behavior Modeling Moderators: Narayanan C Krishnan, WSU and Qiang Yang, Hong Kong UST

  2. B2 Machine learning/behavior modeling, data mining • Facilitators/Scribes: • Narayanan Krishnan (Washington State University), Qiang Yang (Hong Kong University of Science and Technology, Hong Kong) • Attendees: • Du Li, David Chu, Gustavo de Veciana, Dejing Dou, Diane Cook, FarnoushBanaei-Kashani, MircoMusolesi, Oliver Brdiczka, Wang-Chien Lee, TanzeemChoudhury, Wendy Nilsen, Michael Anderson, James Landay, James Rehg, Mohan Trivedi, SvethaVenkatesh, Andrew Campbell

  3. Central Questions • Challenges in • Data • Algorithms • Interdisciplinary

  4. Machine Learning and Data Mining, Behavior Modeling • Grand Challenges • Data • Share the data, annotate the data socially, where the data meet the objectives, • Longitudinal data set over time • Social media for data collection and annotation • Algorithms • Live with noise, poorly labeled but large quantities of data, but design algorithms that are distributed, adaptive, capable of online learning (can learn as the data arrives) • Benchmarking, competition • Multidisciplinary • Better understanding of the application goals and objectives • Understanding taxonomy, temporal, social properties human behavior • Education programs • Funding for Interdisciplinary research for behavior modeling

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