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Finding the Pillars of Strength for Multi-Head Attention

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arxiv 2305.14380 v2 pith:5XWW4GZF submitted 2023-05-22 cs.LG cs.CL

Finding the Pillars of Strength for Multi-Head Attention

classification cs.LG cs.CL
keywords attentionheadsgroupdistinctivefeaturefeaturesissuesmulti-head
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent studies have revealed some issues of Multi-Head Attention (MHA), e.g., redundancy and over-parameterization. Specifically, the heads of MHA were originally designed to attend to information from different representation subspaces, whereas prior studies found that some attention heads likely learn similar features and can be pruned without harming performance. Inspired by the minimum-redundancy feature selection, we assume that focusing on the most representative and distinctive features with minimum resources can mitigate the above issues and lead to more effective and efficient MHAs. In particular, we propose Grouped Head Attention, trained with a self-supervised group constraint that group attention heads, where each group focuses on an essential but distinctive feature subset. We additionally propose a Voting-to-Stay procedure to remove redundant heads, thus achieving a transformer with lighter weights. Moreover, our method achieves significant performance gains on three well-established tasks while considerably compressing parameters.

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