Summary
Researchers propose a probabilistic interpretation of causal self-attention, viewing token embeddings as latent variables. This framework suggests that the attention map creates a degeneracy boundary in embedding space, offering a stability-margin understanding of causal attention. The work also identifies "support tokens" near this boundary and introduces a new MAP-style training penalty.
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