2021
DOI: 10.48550/arxiv.2109.13004
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Optimising for Interpretability: Convolutional Dynamic Alignment Networks

Abstract: We introduce a new family of neural network models called Convolutional Dynamic Alignment Networks (CoDA Nets), which are performant classifiers with a high degree of inherent interpretability. Their core building blocks are Dynamic Alignment Units (DAUs), which are optimised to transform their inputs with dynamically computed weight vectors that align with task-relevant patterns. As a result, CoDA Nets model the classification prediction through a series of input-dependent linear transformations, allowing for… Show more

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References 17 publications
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