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Teaching AI to Explain its Decisions Using Embeddings and Multi-Task Learning

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arxiv 1906.02299 v1 pith:IA2OLIW4 submitted 2019-06-05 cs.LG cs.AIstat.ML

Teaching AI to Explain its Decisions Using Embeddings and Multi-Task Learning

classification cs.LG cs.AIstat.ML
keywords explanationsdomainframeworklearningpredictionsdecisionsmachinemeaningful
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Using machine learning in high-stakes applications often requires predictions to be accompanied by explanations comprehensible to the domain user, who has ultimate responsibility for decisions and outcomes. Recently, a new framework for providing explanations, called TED, has been proposed to provide meaningful explanations for predictions. This framework augments training data to include explanations elicited from domain users, in addition to features and labels. This approach ensures that explanations for predictions are tailored to the complexity expectations and domain knowledge of the consumer. In this paper, we build on this foundational work, by exploring more sophisticated instantiations of the TED framework and empirically evaluate their effectiveness in two diverse domains, chemical odor and skin cancer prediction. Results demonstrate that meaningful explanations can be reliably taught to machine learning algorithms, and in some cases, improving modeling accuracy.

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