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Poster Session 3 (gather.town)
Denny Wu · Chengrun Yang · Tolga Ergen · sanae lotfi · Charles Guille-Escuret · Boris Ginsburg · Hanbake Lyu · Cong Xie · David Newton · Debraj Basu · Yewen Wang · James Lucas · MAOJIA LI · Lijun Ding · Jose Javier Gonzalez Ortiz · Reyhane Askari Hemmat · Zhiqi Bu · Neal Lawton · Kiran Thekumparampil · Jiaming Liang · Lindon Roberts · Jingyi Zhu · Dongruo Zhou
Event URL: https://neurips.gather.town/app/YuI0sg9tIRcx6IeY/OPT+ML%20Lounge »
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Author Information
Denny Wu (University of Toronto & Vector Institute)
Chengrun Yang (Cornell University)
Tolga Ergen (Stanford University)
sanae lotfi (Polytechnique Montréal)
Charles Guille-Escuret (Université de Montréal, Mila)
Boris Ginsburg (NVIDIA)
Hanbake Lyu (UCLA)
Hanbaek Lyu is a Hedrick Assistant Professor in the Department of Math at UCLA. He earned his Ph.D. degree from the Ohio State University in 2018, under the guidance of Prof. David Sivakoff. His research interests lie at probability, combinatorics, complex systems, and machine learning. His main research topics include online dictionary learning for dependent signals, dictionary learning for networks, and MCMC motif sampling sparse networks.
Cong Xie (University of Illinois Urbana-Champaign)
David Newton (Purdue University)
Debraj Basu (Adobe Inc.)
Yewen Wang (UCLA)
James Lucas (University of Toronto)
MAOJIA LI (Rochester Institute of Technology)
Lijun Ding (Cornell University)
Jose Javier Gonzalez Ortiz (MIT)
Reyhane Askari Hemmat (Mila & University of Montreal)
Zhiqi Bu (University of Pennsylvania)
Neal Lawton (University of Southern California)
Kiran Thekumparampil (Univ. of Illinois at Urbana-Champaign)
Jiaming Liang (Georgia Institute of Technology)
Lindon Roberts (Australian National University)
Jingyi Zhu (DAMO Academy, Alibaba Group)
Postgraduate researcher with expertise in stochastic optimization and statistical inference
Dongruo Zhou (UCLA)
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