Causal Explanations for Sequential Decision-Making in Multi-Agent Systems
Abstract
We present CEMA: Causal Explanations in Multi-Agent systems; a framework for creating causal natural language explanations of an agent's decisions in dynamic sequential multi-agent systems to build more trustworthy autonomous agents. Unlike prior work that assumes a fixed causal structure, CEMA only requires a probabilistic model for forward-simulating the state of the system. Using such a model, CEMA simulates counterfactual worlds that identify the salient causes behind the agent's decisions. We evaluate CEMA on the task of motion planning for autonomous driving and test it in diverse simulated scenarios. We show that CEMA correctly and robustly identifies the causes behind the agent's decisions, even when a large number of other agents is present, and show via a user study that CEMA's explanations have a positive effect on participants' trust in autonomous vehicles and are rated as high as high-quality baseline explanations elicited from other participants. We release the collected explanations with annotations as the HEADD dataset.
Cite
@article{arxiv.2302.10809,
title = {Causal Explanations for Sequential Decision-Making in Multi-Agent Systems},
author = {Balint Gyevnar and Cheng Wang and Christopher G. Lucas and Shay B. Cohen and Stefano V. Albrecht},
journal= {arXiv preprint arXiv:2302.10809},
year = {2024}
}
Comments
Accepted in 23rd International Conference on Autonomous Agents and Multi-Agent Systems (AAMAS), 2024