Building Object-based Causal Programs for Human-like Generalization
Abstract
We present a novel task that measures how people generalize objects' causal powers based on observing a single (Experiment 1) or a few (Experiment 2) causal interactions between object pairs. We propose a computational modeling framework that can synthesize human-like generalization patterns in our task setting, and sheds light on how people may navigate the compositional space of possible causal functions and categories efficiently. Our modeling framework combines a causal function generator that makes use of agent and recipient objects' features and relations, and a Bayesian non-parametric inference process to govern the degree of similarity-based generalization. Our model has a natural "resource-rational" variant that outperforms a naive Bayesian account in describing participants, in particular reproducing a generalization-order effect and causal asymmetry observed in our behavioral experiments. We argue that this modeling framework provides a computationally plausible mechanism for real world causal generalization.
Cite
@article{arxiv.2111.12560,
title = {Building Object-based Causal Programs for Human-like Generalization},
author = {Bonan Zhao and Christopher G. Lucas and Neil R. Bramley},
journal= {arXiv preprint arXiv:2111.12560},
year = {2021}
}
Comments
To appear in NeurIPs workshop WHY-21 - Causal Inference & Machine Learning: Why now?