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Double Trouble: How to not explain a text classifier's decisions using counterfactuals synthesized by masked language models?

The study challenges the effectiveness of the Input Marginalization method for attribution by highlighting biases in Deletion-based metrics and comparing it unfavorably to a Leave-One-Out baseline, while suggesting improvements in a LIME method using BERT.

Year
2021
Venue
arXiv 2021
Authors
4
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arxiv.org/abs/2110.11929v4ARXIV-DEFAULT
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Abstract

A principle behind dozens of attribution methods is to take the prediction difference between before-and-after an input feature (here, a token) is removed as its attribution. A popular Input Marginalization (IM) method (Kim et al., 2020) uses BERT to replace a token, yielding more plausible counterfactuals. While Kim et al. (2020) reported that IM is effective, we find this conclusion not convincing as the DeletionBERT metric used in their paper is biased towards IM. Importantly, this bias exists in Deletion-based metrics, including Insertion, Sufficiency, and Comprehensiveness. Furthermore, our rigorous evaluation using 6 metrics and 3 datasets finds no evidence that IM is better than a Leave-One-Out (LOO) baseline. We find two reasons why IM is not better than LOO: (1) deleting a single word from the input only marginally reduces a classifier's accuracy; and (2) a highly predictable word is always given near-zero attribution, regardless of its true importance to the classifier. In contrast, making LIME samples more natural via BERT consistently improves LIME accuracy under several ROAR metrics.

Authors

4