A novel explainable structure for text classification

2022 European Conference on Natural Language Processing and Information Retrieval (ECNLPIR)(2022)

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摘要
With the development of deep learning, text classification has achieved very good results, but the poor interpretability of the model still limits its application in practical scenarios to a certain extent. Many explainable text classifiers extract words from a sentence and then observe their effect on increasing or decreasing classification accuracy. However, in many cases, the relationship between words in a sentence is interdependent and closely related. On account of the above, selecting words individually often has little effect on the classification results. To address the above situation, we propose a new model which treats interpretability as an intrinsic property, using constituent trees to generate continuous interpretable words instead of isolated words and it achieves good results on several datasets.
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关键词
text classification,explainable,constituent tree
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