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ProtoTEx: Explaining Model Decisions with Prototype Tensors

ProtoTEx, a prototype-based NLP classification architecture, provides accurate and interpretable classifications using prototype tensors and an interleaved training algorithm, outperforming BART-large and BERT-large on propaganda detection.

Year
2022
Venue
ACL 2022 5
Authors
5
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arxiv.org/abs/2204.05426v2ARXIV-DEFAULT
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Abstract

We present ProtoTEx, a novel white-box NLP classification architecture based on prototype networks. ProtoTEx faithfully explains model decisions based on prototype tensors that encode latent clusters of training examples. At inference time, classification decisions are based on the distances between the input text and the prototype tensors, explained via the training examples most similar to the most influential prototypes. We also describe a novel interleaved training algorithm that effectively handles classes characterized by the absence of indicative features. On a propaganda detection task, ProtoTEx accuracy matches BART-large and exceeds BERT-large with the added benefit of providing faithful explanations. A user study also shows that prototype-based explanations help non-experts to better recognize propaganda in online news.

Authors

5