6533b7d3fe1ef96bd126123f
RESEARCH PRODUCT
Learning competitive pricing strategies by multi-agent reinforcement learning
Erich KutschinskiThomas UthmannDaniel Polanisubject
Economics and EconometricsControl and OptimizationManagement scienceApplied MathematicsQ-learningAgent-based computational economicsTask (project management)Competition (economics)Pricing strategiesRisk analysis (engineering)Dynamic pricingEconomicsReinforcement learningAdaptation (computer science)description
Abstract 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.
year | journal | country | edition | language |
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2003-09-01 | Journal of Economic Dynamics and Control |