Back to Search Start Over

Visual Chain of Thought: Bridging Logical Gaps with Multimodal Infillings

Authors :
Rose, Daniel
Himakunthala, Vaishnavi
Ouyang, Andy
He, Ryan
Mei, Alex
Lu, Yujie
Saxon, Michael
Sonar, Chinmay
Mirza, Diba
Wang, William Yang
Publication Year :
2023

Abstract

Recent advances in large language models elicit reasoning in a chain-of-thought that allows models to decompose problems in a human-like fashion. Though this paradigm improves multi-step reasoning ability in language models, it is limited by being unimodal and applied mainly to question-answering tasks. We claim that incorporating visual augmentation into reasoning is essential, especially for complex, imaginative tasks. Consequently, we introduce VCoT, a novel method that leverages chain-of-thought prompting with vision-language grounding to recursively bridge the logical gaps within sequential data. Our method uses visual guidance to generate synthetic multimodal infillings that add consistent and novel information to reduce the logical gaps for downstream tasks that can benefit from temporal reasoning, as well as provide interpretability into models' multi-step reasoning. We apply VCoT to the Visual Storytelling and WikiHow summarization datasets and demonstrate through human evaluation that VCoT offers novel and consistent synthetic data augmentation beating chain-of-thought baselines, which can be used to enhance downstream performance.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.02317
Document Type :
Working Paper