Hierarchical Interpretation of Neural Text Classification

Hanqi Yan, Lin Gui, Yulan He


Abstract
Recent years have witnessed increasing interest in developing interpretable models in Natural Language Processing (NLP). Most existing models aim at identifying input features such as words or phrases important for model predictions. Neural models developed in NLP, however, often compose word semantics in a hierarchical manner. As such, interpretation by words or phrases only cannot faithfully explain model decisions in text classification. This article proposes a novel Hierarchical Interpretable Neural Text classifier, called HINT, which can automatically generate explanations of model predictions in the form of label-associated topics in a hierarchical manner. Model interpretation is no longer at the word level, but built on topics as the basic semantic unit. Experimental results on both review datasets and news datasets show that our proposed approach achieves text classification results on par with existing state-of-the-art text classifiers, and generates interpretations more faithful to model predictions and better understood by humans than other interpretable neural text classifiers.1
Anthology ID:
2022.cl-4.17
Volume:
Computational Linguistics, Volume 48, Issue 4 - December 2022
Month:
December
Year:
2022
Address:
Cambridge, MA
Venue:
CL
SIG:
Publisher:
MIT Press
Note:
Pages:
987–1020
Language:
URL:
https://aclanthology.org/2022.cl-4.17
DOI:
10.1162/coli_a_00459
Bibkey:
Cite (ACL):
Hanqi Yan, Lin Gui, and Yulan He. 2022. Hierarchical Interpretation of Neural Text Classification. Computational Linguistics, 48(4):987–1020.
Cite (Informal):
Hierarchical Interpretation of Neural Text Classification (Yan et al., CL 2022)
Copy Citation:
PDF:
https://preview.aclanthology.org/naacl-24-ws-corrections/2022.cl-4.17.pdf