Timezone: »
Closing Remarks
Bo Dai · Niao He · Nicolas Le Roux · Lihong Li · Dale Schuurmans · Martha White
Awards Announcement
Author Information
Bo Dai (Google Brain)
Niao He (UIUC)
Nicolas Le Roux (Google)
Lihong Li (Google Brain)
Dale Schuurmans (Google Inc.)
Martha White (University of Alberta)
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2021 Spotlight: Combiner: Full Attention Transformer with Sparse Computation Cost »
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2020 Session: Orals & Spotlights Track 14: Reinforcement Learning »
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2013 Poster: Robust Low Rank Kernel Embeddings of Multivariate Distributions »
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2012 Poster: Convex Multi-view Subspace Learning »
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2011 Poster: An Empirical Evaluation of Thompson Sampling »
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