Recently, Logic Explained Networks (LENs) have been proposed as explainable-by-design neural models providing logic explanations for their predictions. However, these models have only been applied to vision and tabular data, and they mostly favour the generation of global explanations, while local ones tend to be noisy and verbose. For these reasons, we propose LENp, improving local explanations by perturbing input words, and we test it on text classification. Our results show that (i) LENp provides better local explanations than LIME in terms of sensitivity and faithfulness, and (ii) its logic explanations are more useful and user-friendly than the feature scoring provided by LIME as attested by a human survey.

Jain, R., Ciravegna, G., Barbiero, P., Giannini, F., Buffelli, D., Lio, P. (2022). Extending Logic Explained Networks to Text Classification. In Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing (pp.8838-8857). Association for Computational Linguistics (ACL) [10.18653/V1/2022.EMNLP-MAIN.604].

Extending Logic Explained Networks to Text Classification

Gabriele Ciravegna;Francesco Giannini;
2022-01-01

Abstract

Recently, Logic Explained Networks (LENs) have been proposed as explainable-by-design neural models providing logic explanations for their predictions. However, these models have only been applied to vision and tabular data, and they mostly favour the generation of global explanations, while local ones tend to be noisy and verbose. For these reasons, we propose LENp, improving local explanations by perturbing input words, and we test it on text classification. Our results show that (i) LENp provides better local explanations than LIME in terms of sensitivity and faithfulness, and (ii) its logic explanations are more useful and user-friendly than the feature scoring provided by LIME as attested by a human survey.
2022
Jain, R., Ciravegna, G., Barbiero, P., Giannini, F., Buffelli, D., Lio, P. (2022). Extending Logic Explained Networks to Text Classification. In Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing (pp.8838-8857). Association for Computational Linguistics (ACL) [10.18653/V1/2022.EMNLP-MAIN.604].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11365/1252794