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arxiv: 2104.06323 · v6 · pith:EU2USK3E · submitted 2021-04-13 · cs.LG · cs.AI· stat.ML

{δ}-CLUE: Diverse Sets of Explanations for Uncertainty Estimates

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classification cs.LG cs.AIstat.ML
keywords cluedeltaexplanationsinputuncertaintycluesconfidentdiverse
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To interpret uncertainty estimates from differentiable probabilistic models, recent work has proposed generating Counterfactual Latent Uncertainty Explanations (CLUEs). However, for a single input, such approaches could output a variety of explanations due to the lack of constraints placed on the explanation. Here we augment the original CLUE approach, to provide what we call $\delta$-CLUE. CLUE indicates $\it{one}$ way to change an input, while remaining on the data manifold, such that the model becomes more confident about its prediction. We instead return a $\it{set}$ of plausible CLUEs: multiple, diverse inputs that are within a $\delta$ ball of the original input in latent space, all yielding confident predictions.

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