ROAIAug 17, 2023

A Mathematical Characterization of Minimally Sufficient Robot Brains

arXiv:2308.09041v110 citationsh-index: 54
Originality Incremental advance
AI Analysis

This work addresses foundational limits in robotics for designing efficient algorithms and hardware, but it is incremental as it builds on existing transition system models.

The paper tackles the problem of determining the minimal internal system required for robots to perform passive filtering and active planning tasks, establishing that minimal information transition systems exist and are unique under general conditions.

This paper addresses the lower limits of encoding and processing the information acquired through interactions between an internal system (robot algorithms or software) and an external system (robot body and its environment) in terms of action and observation histories. Both are modeled as transition systems. We want to know the weakest internal system that is sufficient for achieving passive (filtering) and active (planning) tasks. We introduce the notion of an information transition system for the internal system which is a transition system over a space of information states that reflect a robot's or other observer's perspective based on limited sensing, memory, computation, and actuation. An information transition system is viewed as a filter and a policy or plan is viewed as a function that labels the states of this information transition system. Regardless of whether internal systems are obtained by learning algorithms, planning algorithms, or human insight, we want to know the limits of feasibility for given robot hardware and tasks. We establish, in a general setting, that minimal information transition systems exist up to reasonable equivalence assumptions, and are unique under some general conditions. We then apply the theory to generate new insights into several problems, including optimal sensor fusion/filtering, solving basic planning tasks, and finding minimal representations for modeling a system given input-output relations.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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