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Contextual Explanation Networks

Modern learning algorithms excel at producing accurate but complex models of the data. However, deploying such models in the real-world requires extra care: we must ensure their reliability, robustness, and absence of undesired biases. This motivates the development of models that are equally accurate but can be also easily inspected and assessed beyond their predictive performance. To this end, we introduce contextual explanation networks (CEN)---a class of architectures that learn to predict by generating and utilizing intermediate, simplified probabilistic models. Specifically, CENs generate parameters for intermediate graphical models which are further used for prediction and play the role of explanations. Contrary to the existing post-hoc model-explanation tools, CENs learn to predict and to explain simultaneously. Our approach offers two major advantages: (i) for each prediction valid, instance-specific explanation is generated with no computational overhead and (ii) prediction via explanation acts as a regularizer and boosts performance in data-scarce settings. We analyze the proposed framework theoretically and experimentally. Our results on image and text classification an

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Related contextCo-authorshipCo-authorshipCo-authorshipAuthorshipWorks onAuthorshipAuthorshipTopic signalTopic signalWContextual Explanation Networkspreprint / 2020AMaruan Al-ShedivatResearcherAAvinava DubeyResearcherAEric P. XingResearcherTMachine Learning49008 worksTArtificial Intelligence22915 works
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Contextual Explanation Networks

preprint / 2020

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