CLHCMay 4, 2023

Neighboring Words Affect Human Interpretation of Saliency Explanations

arXiv:2305.02679v2227 citations
AI Analysis

This incremental research addresses interpretability issues in AI for users of text-based models, questioning current explanation methods.

The study investigated how marking neighboring words in word-level saliency explanations affects human perception of word importance, finding significant effects based on direction and linguistic measures.

Word-level saliency explanations ("heat maps over words") are often used to communicate feature-attribution in text-based models. Recent studies found that superficial factors such as word length can distort human interpretation of the communicated saliency scores. We conduct a user study to investigate how the marking of a word's neighboring words affect the explainee's perception of the word's importance in the context of a saliency explanation. We find that neighboring words have significant effects on the word's importance rating. Concretely, we identify that the influence changes based on neighboring direction (left vs. right) and a-priori linguistic and computational measures of phrases and collocations (vs. unrelated neighboring words). Our results question whether text-based saliency explanations should be continued to be communicated at word level, and inform future research on alternative saliency explanation methods.

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