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  • title: Influence Patterns for Explaining Information Flow in BERT
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            Influence Patterns for Explaining Information Flow in BERT
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            Influence Patterns for Explaining Information Flow in BERT

            Dec 6, 2021

            Speakers

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            Caleb Lu

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            Zifan Wang

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            Piotr Mardziel

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            About

            While attention is all you need may be proving true, we do not know why: attention-based transformer models such as BERT are superior but how information flows from input tokens to output predictions are unclear. We introduce influence patterns, abstractions of sets of paths through a transformer model. Patterns quantify and localize the flow of information to paths passing through a sequence of model nodes. Experimentally, we find that significant portion of information flow in BERT goes throug…

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