Being Right for Whose Right Reasons?

Terne Sasha Thorn Jakobsen, Laura Cabello, Anders Søgaard

Main: Interpretability and Analysis of Models for NLP Main-poster Paper

Poster Session 3: Interpretability and Analysis of Models for NLP (Poster)
Conference Room: Frontenac Ballroom and Queen's Quay
Conference Time: July 11, 09:00-10:30 (EDT) (America/Toronto)
Global Time: July 11, Poster Session 3 (13:00-14:30 UTC)
Keywords: human-subject application-grounded evaluations
TLDR: Explainability methods are used to benchmark the extent to which model predictions align with human rationales i.e., are `right for the right reasons'. Previous work has failed to acknowledge, however, that what counts as a rationale is sometimes subjective. This paper presents what we think is a fi...
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Abstract: Explainability methods are used to benchmark the extent to which model predictions align with human rationales i.e., are `right for the right reasons'. Previous work has failed to acknowledge, however, that what counts as a rationale is sometimes subjective. This paper presents what we think is a first of its kind, a collection of human rationale annotations augmented with the annotators demographic information. We cover three datasets spanning sentiment analysis and common-sense reasoning, and six demographic groups (balanced across age and ethnicity). Such data enables us to ask both what demographics our predictions align with and whose reasoning patterns our models' rationales align with. We find systematic inter-group annotator disagreement and show how 16 Transformer-based models align better with rationales provided by certain demographic groups: We find that models are biased towards aligning best with older and/or white annotators. We zoom in on the effects of model size and model distillation, finding --contrary to our expectations-- negative correlations between model size and rationale agreement as well as no evidence that either model size or model distillation improves fairness.