AOAILGMASOC-PHSep 15, 2021

Modeling the effects of environmental and perceptual uncertainty using deterministic reinforcement learning dynamics with partial observability

arXiv:2109.07259v219 citations
AI Analysis

This provides a formal, lightweight tool for researchers in biology, social science, and machine learning to systematically study the effects of interacting partially observant agents, though it is incremental in building on existing reinforcement learning frameworks.

The paper tackles the problem of modeling how agents learn and make decisions when they only partially observe the true state of the environment, by deriving deterministic reinforcement learning dynamics for such scenarios. It finds that partial observability can lead to benefits like faster and more stable learning, overcoming social dilemmas, and reveals emergent phenomena such as catastrophic limit cycles and critical slowing down in multiagent systems.

Assessing the systemic effects of uncertainty that arises from agents' partial observation of the true states of the world is critical for understanding a wide range of scenarios. Yet, previous modeling work on agent learning and decision-making either lacks a systematic way to describe this source of uncertainty or puts the focus on obtaining optimal policies using complex models of the world that would impose an unrealistically high cognitive demand on real agents. In this work we aim to efficiently describe the emergent behavior of biologically plausible and parsimonious learning agents faced with partially observable worlds. Therefore we derive and present deterministic reinforcement learning dynamics where the agents observe the true state of the environment only partially. We showcase the broad applicability of our dynamics across different classes of partially observable agent-environment systems. We find that partial observability creates unintuitive benefits in a number of specific contexts, pointing the way to further research on a general understanding of such effects. For instance, partially observant agents can learn better outcomes faster, in a more stable way and even overcome social dilemmas. Furthermore, our method allows the application of dynamical systems theory to partially observable multiagent leaning. In this regard we find the emergence of catastrophic limit cycles, a critical slowing down of the learning processes between reward regimes and the separation of the learning dynamics into fast and slow directions, all caused by partial observability. Therefore, the presented dynamics have the potential to become a formal, yet practical, lightweight and robust tool for researchers in biology, social science and machine learning to systematically investigate the effects of interacting partially observant agents.

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