| 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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