On the Learning Mechanisms in Physical Reasoning
Shiqian Li, Kewen Wu, Chi Zhang, Yixin Zhu

TL;DR
This paper compares learning from dynamics versus intuition in physical reasoning, revealing that simple intuition-based methods can outperform or match complex dynamics prediction, with implications for future research.
Contribution
The study challenges the assumption that dynamics prediction is essential for physical reasoning, showing that intuition-based learning can be equally effective or better.
Findings
LfI outperforms LfD in simple cases
Ground-truth dynamics yield higher performance than LfI
Dynamics prediction errors accumulate over long horizons
Abstract
Is dynamics prediction indispensable for physical reasoning? If so, what kind of roles do the dynamics prediction modules play during the physical reasoning process? Most studies focus on designing dynamics prediction networks and treating physical reasoning as a downstream task without investigating the questions above, taking for granted that the designed dynamics prediction would undoubtedly help the reasoning process. In this work, we take a closer look at this assumption, exploring this fundamental hypothesis by comparing two learning mechanisms: Learning from Dynamics (LfD) and Learning from Intuition (LfI). In the first experiment, we directly examine and compare these two mechanisms. Results show a surprising finding: Simple LfI is better than or on par with state-of-the-art LfD. This observation leads to the second experiment with Ground-truth Dynamics, the ideal case of LfD…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Neural Networks and Applications · Topic Modeling
