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Solving the Baby Intuitions Benchmark with a Hierarchically Bayesian Theory of Mind

Authors :
Zhi-Xuan, Tan
Gothoskar, Nishad
Pollok, Falk
Gutfreund, Dan
Tenenbaum, Joshua B.
Mansinghka, Vikash K.
Publication Year :
2022

Abstract

To facilitate the development of new models to bridge the gap between machine and human social intelligence, the recently proposed Baby Intuitions Benchmark (arXiv:2102.11938) provides a suite of tasks designed to evaluate commonsense reasoning about agents' goals and actions that even young infants exhibit. Here we present a principled Bayesian solution to this benchmark, based on a hierarchically Bayesian Theory of Mind (HBToM). By including hierarchical priors on agent goals and dispositions, inference over our HBToM model enables few-shot learning of the efficiency and preferences of an agent, which can then be used in commonsense plausibility judgements about subsequent agent behavior. This approach achieves near-perfect accuracy on most benchmark tasks, outperforming deep learning and imitation learning baselines while producing interpretable human-like inferences, demonstrating the advantages of structured Bayesian models of human social cognition.<br />Comment: 6 pages, 2 figures. Presented at the Robotics: Science and Systems 2022 Workshop on Social Intelligence in Humans and Robots

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2208.02914
Document Type :
Working Paper