A Guiding Principle for Causal Decision Problems
Abstract
We define a Causal Decision Problem as a Decision Problem where the available actions, the family of uncertain events and the set of outcomes are related through the variables of a Causal Graphical Model . A solution criteria based on Pearl's Do-Calculus and the Expected Utility criteria for rational preferences is proposed. The implementation of this criteria leads to an on-line decision making procedure that has been shown to have similar performance to classic Reinforcement Learning algorithms while allowing for a causal model of an environment to be learned. Thus, we aim to provide the theoretical guarantees of the usefulness and optimality of a decision making procedure based on causal information.
Cite
@article{arxiv.1902.02279,
title = {A Guiding Principle for Causal Decision Problems},
author = {M. Gonzalez-Soto and L. E. Sucar and H. J. Escalante},
journal= {arXiv preprint arXiv:1902.02279},
year = {2019}
}
Comments
Submitted to AAAI Spring Symposium Beyond Curve Fitting