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One Dynamic Pricing Strategy in Agent Economy Using Neural Network Based on Online Learning

机译:基于在线学习的神经网络在代理商经济中的一种动态定价策略

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This paper examines seller strategies for dynamic pricing in a market for which a seller has finite time horizon to sell its inventory. A dynamic pricing strategy is developed using neural network based on online learning (called SDNN strategy). The SDNN strategy takes in account the dynamics and resulting uncertainties of the market place. The experiments show that the SDNN strategy exhibits superior performance to the other candidate dynamic pricing strategies which of similar computational simplicity and lack of assumptions about the market place.
机译:本文研究了卖方在有限的时间范围内出售其库存的市场中动态定价的卖方策略。使用基于在线学习的神经网络开发了一种动态定价策略(称为SDNN策略)。 SDNN策略考虑了市场动态和由此带来的不确定性。实验表明,SDNN策略表现出优于其他候选动态定价策略的性能,后者具有类似的计算简单性,并且对市场缺乏假设。

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