Alexander Morgan
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2026
When Softmax Fails at the Top: Extreme Value Corrections for InfoNCE
The paper proposes WEINCE, a modified InfoNCE objective that uses extreme value theory corrections to improve contrastive learning by more accurately modeling the selection of hard negative examples.
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cs.LGcs.AIstat.APRecentMay 29, 2026
When Softmax Fails at the Top: Extreme Value Corrections for InfoNCE
Melihcan Erol, Suat Evren, Oktay Ozel, Alexander Morgan +2 more
The paper proposes WEINCE, a modified InfoNCE objective that uses extreme value theory corrections to improve contrastive learning by more accurately modeling the selection of hard negative examples.
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