Configurable Environments in Reinforcement Learning: An Overview

Author:

Metelli Alberto Maria

Abstract

AbstractReinforcement Learning (RL) has emerged as an effective approach to address a variety of complex control tasks. In a typical RL problem, an agent interacts with the environment by perceiving observations and performing actions, with the ultimate goal of maximizing the cumulative reward. In the traditional formulation, the environment is assumed to be a fixed entity that cannot be externally controlled. However, there exist several real-world scenarios in which the environment offers the opportunity toconfiguresome of its parameters, with diverse effects on the agent’s learning process. In this contribution, we provide an overview of the main aspects of environment configurability. We start by introducing the formalism of the Configurable Markov Decision Processes (Conf-MDPs) and we illustrate the solutions concepts. Then, we revise the algorithms for solving the learning problem in Conf-MDPs. Finally, we present two applications of Conf-MDPs: policy space identification and control frequency adaptation.

Publisher

Springer International Publishing

Reference38 articles.

1. J. Bobadilla, F. Ortega, A. Hernando, A. Gutiérrez, Recommender systems survey. Knowl. Based Syst. 46, 109–132 (2013)

2. B.L. Bowerman, Nonstationary Markov Decision Processes and Related Topics in Nonstationary Markov Chains (1974)

3. G. Casella, R.L. Berger, Statistical Inference, vol. 2 (Duxbury Pacific Grove, CA, 2002)

4. K.A. Ciosek, S. Whiteson, OFFER: off-environment reinforcement learning, in Proceedings of the Thirty-First AAAI Conference on Artificial Intelligence, February 4-9, 2017, San Francisco, California, USA, ed. by S.P. Singh, S. Markovitch (AAAI Press, 2017), pp. 1819–1825

5. V. Conitzer, T. Sandholm, Computing the optimal strategy to commit to, in Proceedings 7th ACM Conference on Electronic Commerce (EC-2006), Ann Arbor, Michigan, USA, June 11-15, 2006, ed. by J. Feigenbaum, J.C.-I. Chuang, D.M. Pennock (ACM, 2006), pp. 82–90

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1. Reinforcement Learning Based Controller for a Soft Continuum Robot;2023 International Conference on Big Data, Knowledge and Control Systems Engineering (BdKCSE);2023-11-02

2. A unified view of configurable Markov Decision Processes: Solution concepts, value functions, and operators;Intelligenza Artificiale;2022-12-27

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