cslab-hub/GlobalTimeSeriesCoherenceMatrices
Code for the Paper Constructing Global Coherence Representations:Identifying Interpretability and Coherences ofTransformer Attention in Time Series Data. It is about creating coherence matrices which represent the attention from each symbol to each other symbol.
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TypeScript
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MIT
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Jan 06, 2022
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