Towards Grad-CAM Based Explainability in a Legal Text Processing Pipeline

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Authors Lukasz Gorski, Shashishekar Ramakrishna, Jedrzej M. Nowosielski arXiv ID 2012.09603 Category cs.HC: Human-Computer Interaction Citations 23 Venue XAILA@JURIX Last Checked 4 months ago
Abstract
Explainable AI(XAI)is a domain focused on providing interpretability and explainability of a decision-making process. In the domain of law, in addition to system and data transparency, it also requires the (legal-) decision-model transparency and the ability to understand the models inner working when arriving at the decision. This paper provides the first approaches to using a popular image processing technique, Grad-CAM, to showcase the explainability concept for legal texts. With the help of adapted Grad-CAM metrics, we show the interplay between the choice of embeddings, its consideration of contextual information, and their effect on downstream processing.
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