Learning Causal Structure Distributions for Robust Planning
Alejandro Murillo-Gonzalez, Junhong Xu, Lantao Liu

TL;DR
This paper introduces a method to learn causal structure distributions for robotic dynamics, enhancing robustness and efficiency in planning by leveraging causal sparsity and probabilistic modeling.
Contribution
It presents a novel approach to learn causal structure distributions that improve dynamics modeling and planning robustness in robotics.
Findings
Enhanced robustness to input corruption and environmental changes
Lower computational resources compared to traditional methods
Successful validation on real-world robotic systems
Abstract
Structural causal models describe how the components of a robotic system interact. They provide both structural and functional information about the relationships that are present in the system. The structural information outlines the variables among which there is interaction. The functional information describes how such interactions work, via equations or learned models. In this paper we find that learning the functional relationships while accounting for the uncertainty about the structural information leads to more robust dynamics models which improves downstream planning, while using significantly lower computational resources. This in contrast with common model-learning methods that ignore the causal structure and fail to leverage the sparsity of interactions in robotic systems. We achieve this by estimating a causal structure distribution that is used to sample causal graphs…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · AI-based Problem Solving and Planning · Reinforcement Learning in Robotics
