A study of first-passage time minimization via Q-learning in heated gridworlds
Larchenko, M. A., Osinenko, P., Yaremenko, G., Palyulin, V. V.
–arXiv.org Artificial Intelligence
Optimization of first-passage times is required in applications ranging from nanobots navigation to market trading. In such settings, one often encounters unevenly distributed noise levels across the environment. We extensively study how a learning agent fares in 1- and 2- dimensional heated gridworlds with an uneven temperature distribution. The results show certain bias effects in agents trained via simple tabular Q-learning, SARSA, Expected SARSA and Double Q-learning. While high learning rate prevents exploration of regions with higher temperature, low enough rate increases the presence of agents in such regions. The discovered peculiarities and biases of temporal-difference-based reinforcement learning methods should be taken into account in real-world physical applications and agent design.
arXiv.org Artificial Intelligence
Oct-5-2021
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