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Weakly Supervised Multi-task Learning for Concept-based Explainability (2104.12459v1)

Published 26 Apr 2021 in cs.LG and cs.AI

Abstract: In ML-aided decision-making tasks, such as fraud detection or medical diagnosis, the human-in-the-loop, usually a domain-expert without technical ML knowledge, prefers high-level concept-based explanations instead of low-level explanations based on model features. To obtain faithful concept-based explanations, we leverage multi-task learning to train a neural network that jointly learns to predict a decision task based on the predictions of a precedent explainability task (i.e., multi-label concepts). There are two main challenges to overcome: concept label scarcity and the joint learning. To address both, we propose to: i) use expert rules to generate a large dataset of noisy concept labels, and ii) apply two distinct multi-task learning strategies combining noisy and golden labels. We compare these strategies with a fully supervised approach in a real-world fraud detection application with few golden labels available for the explainability task. With improvements of 9.26% and of 417.8% at the explainability and decision tasks, respectively, our results show it is possible to improve performance at both tasks by combining labels of heterogeneous quality.

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Authors (4)
  1. Vladimir Balayan (5 papers)
  2. Pedro Saleiro (39 papers)
  3. Pedro Bizarro (41 papers)
  4. Catarina Belém (6 papers)
Citations (10)