연구성과

학술발표
논문명 Debiasing Event Understanding for Visual Commonsense Tasks
개최일 2022.05.22
학술회의명 60th Annual Meeting of the Association for Computational Linguistics
책임교수
구분 구두발표
제1저자 Minji Seo, YeonJoon Jung
교신저자 seung-won hwang
공동저자 Seungtaek Choi, seung-won hwang, Bei Liu
국내/국외 국외
개최국가 N/A
주관기관

We study event understanding as a critical step towards visual commonsense tasks.Meanwhile, we argue that current object-based event understanding is purely likelihood-based, leading to incorrect event prediction, due to biased correlation between events and objects.We propose to mitigate such biases with do-calculus, proposed in causality research, but overcoming its limited robustness, by an optimized aggregation with association-based prediction.We show the effectiveness of our approach, intrinsically by comparing our generated events with ground-truth event annotation, and extrinsically by downstream commonsense tasks.

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