Interpretability Rules: Jointly Bootstrapping a Neural Relation Extractorwith an Explanation Decoder

NAACL (TrustNLP) 2021  ·  Zheng Tang, Mihai Surdeanu ·

We introduce a method that transforms a rule-based relation extraction (RE) classifier into a neural one such that both interpretability and performance are achieved. Our approach jointly trains a RE classifier with a decoder that generates explanations for these extractions, using as sole supervision a set of rules that match these relations. Our evaluation on the TACRED dataset shows that our neural RE classifier outperforms the rule-based one we started from by 9 F1 points; our decoder generates explanations with a high BLEU score of over 90%; and, the joint learning improves the performance of both the classifier and decoder.

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