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Neuro Symbolic Knowledge Reasoning for Procedural Video Question Answering

19 March 2025
Thanh-Son Nguyen
Hong Yang
Tzeh Yuan Neoh
Hao Zhang
Ee Yeo Keat
Basura Fernando
    NAI
ArXiv (abs)PDFHTMLGithub
Main:14 Pages
11 Figures
Bibliography:5 Pages
10 Tables
Appendix:13 Pages
Abstract

This paper introduces a new video question-answering (VQA) dataset that challenges models to leverage procedural knowledge for complex reasoning. It requires recognizing visual entities, generating hypotheses, and performing contextual, causal, and counterfactual reasoning. To address this, we propose neuro symbolic reasoning module that integrates neural networks and LLM-driven constrained reasoning over variables for interpretable answer generation. Results show that combining LLMs with structured knowledge reasoning with logic enhances procedural reasoning on the STAR benchmark and our dataset. Code and dataset atthis https URLsoon.

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