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Do Transformer Models Show Similar Attention Patterns to Task-Specific Human Gaze?

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arxiv 2205.10226 v1 pith:27ERUHM2 submitted 2022-04-25 cs.CL cs.LG

Do Transformer Models Show Similar Attention Patterns to Task-Specific Human Gaze?

classification cs.CL cs.LG
keywords attentionhumanmodelstask-specificself-attentionfunctionslarge-scalepatterns
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Learned self-attention functions in state-of-the-art NLP models often correlate with human attention. We investigate whether self-attention in large-scale pre-trained language models is as predictive of human eye fixation patterns during task-reading as classical cognitive models of human attention. We compare attention functions across two task-specific reading datasets for sentiment analysis and relation extraction. We find the predictiveness of large-scale pre-trained self-attention for human attention depends on `what is in the tail', e.g., the syntactic nature of rare contexts. Further, we observe that task-specific fine-tuning does not increase the correlation with human task-specific reading. Through an input reduction experiment we give complementary insights on the sparsity and fidelity trade-off, showing that lower-entropy attention vectors are more faithful.

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