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Talk
Large Margin Gaussian Mixture Models for Automatic Speech Recognition
Fei Sha · Lawrence Saul
Wed Dec 06 05:00 PM -- 05:00 PM (PST) @
Author Information
Fei Sha (Google Research)
Lawrence Saul (Flatiron Institute)
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