Toward Universal and Interpretable World Models for Open-ended Learning Agents
Artificial Intelligence
2024-10-16 v2 Multiagent Systems
Neurons and Cognition
Abstract
We introduce a generic, compositional and interpretable class of generative world models that supports open-ended learning agents. This is a sparse class of Bayesian networks capable of approximating a broad range of stochastic processes, which provide agents with the ability to learn world models in a manner that may be both interpretable and computationally scalable. This approach integrating Bayesian structure learning and intrinsically motivated (model-based) planning enables agents to actively develop and refine their world models, which may lead to developmental learning and more robust, adaptive behavior.
Cite
@article{arxiv.2409.18676,
title = {Toward Universal and Interpretable World Models for Open-ended Learning Agents},
author = {Lancelot Da Costa},
journal= {arXiv preprint arXiv:2409.18676},
year = {2024}
}
Comments
4 pages including appendix, 6 including appendix and references; 2 figures