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Contrastive Explanations for Model Interpretability

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arxiv 2103.01378 v3 pith:LG7SFD2T submitted 2021-03-02 cs.CL cs.AIcs.LG

Contrastive Explanations for Model Interpretability

classification cs.CL cs.AIcs.LG
keywords explanationscontrastivemodelinputproduceusefulattributionclassification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Contrastive explanations clarify why an event occurred in contrast to another. They are more inherently intuitive to humans to both produce and comprehend. We propose a methodology to produce contrastive explanations for classification models by modifying the representation to disregard non-contrastive information, and modifying model behavior to only be based on contrastive reasoning. Our method is based on projecting model representation to a latent space that captures only the features that are useful (to the model) to differentiate two potential decisions. We demonstrate the value of contrastive explanations by analyzing two different scenarios, using both high-level abstract concept attribution and low-level input token/span attribution, on two widely used text classification tasks. Specifically, we produce explanations for answering: for which label, and against which alternative label, is some aspect of the input useful? And which aspects of the input are useful for and against particular decisions? Overall, our findings shed light on the ability of label-contrastive explanations to provide a more accurate and finer-grained interpretability of a model's decision.

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