Do Human Rationales Improve Machine Explanations? | Awesome LLM Papers

Do Human Rationales Improve Machine Explanations?

Julia Strout, Ye Zhang, Raymond J. Mooney · Proceedings of the 2019 ACL Workshop BlackboxNLP: Analyzing and Interpreting Neural Networks for NLP · 2019

Work on “learning with rationales” shows that humans providing explanations to a machine learning system can improve the system’s predictive accuracy. However, this work has not been connected to work in “explainable AI” which concerns machines explaining their reasoning to humans. In this work, we show that learning with rationales can also improve the quality of the machine’s explanations as evaluated by human judges. Specifically, we present experiments showing that, for CNN- based text classification, explanations generated using “supervised attention” are judged superior to explanations generated using normal unsupervised attention.

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