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首页> 外文期刊>Journal of Economic Dynamics and Control >Learning competitive pricing strategies by multi-agent reinforcement learning
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Learning competitive pricing strategies by multi-agent reinforcement learning

机译:通过多主体强化学习来学习竞争性定价策略

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摘要

In electronic marketplaces automated and dynamic pricing is becoming increasingly popular. Agents that perform this task can improve themselves by learning from past observations, possibly using reinforcement learning techniques. Co-learning of several adaptive agents against each other may lead to unforeseen results and increasingly dynamic behavior of the market. In this article we shed some light on price developments arising from a simple price adaptation strategy. Furthermore, we examine several adaptive pricing strategies and their learning behavior in a co-learning scenario with different levels of competition. Q-learning manages to learn best-reply strategies well, but is expensive to train.
机译:在电子市场中,自动定价和动态定价正变得越来越流行。执行此任务的代理可以通过从过去的观察中学习(可能使用强化学习技术)来提高自己。几种自适应代理相互学习可能会导致无法预料的结果,并使市场行为更加动态。在本文中,我们阐明了由简单的价格适应策略引起的价格发展。此外,我们在竞争程度不同的共同学习场景中研究了几种自适应定价策略及其学习行为。 Q学习能够很好地学习最佳答复策略,但是培训成本很高。

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