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In this paper, we explore the susceptibility of the independent Q-learning algorithms (a classical and widely used multi-agent reinforcement learning method) to strategic manipulation of sophisticated opponents in normal-form games played repeatedly. We quantify how much strategically sophisticated agents can exploit naive Q-learners if they know the opponents' Q-learning algorithm. To this end, we formulate the strategic actors' interactions as a stochastic game (whose state encompasses Q-function estimates of the Q-learners) as if the Q-learning algorithms are the underlying dynamical system. We also present a quantization-based approximation scheme to tackle the continuum state space and analyze its performance for two competing strategic actors and a single strategic actor both analytically and numerically.
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Arslantas et al. (Wed,) studied this question.
www.synapsesocial.com/papers/68e74353b6db6435876bcded — DOI: https://doi.org/10.1109/lcsys.2024.3416240
Yuksel Arslantas
Ege Yuceel
Muhammed O. Sayin
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