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Dynamic pricing by hopfield neural network

机译:Hopfield神经网络的动态定价

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The increase in the number of shopbots users in e-commerce has triggered flexibility of sellers in their pricing strategies. Seilers see the importance of automated price setting which provides efficient Services to a large number of buyers who are using shopbots. This paper studies the eharacteristic of decreasing energy with time in a continuous model of a Hopfield neural network that is the decreasing of errors in the network with respect to time. The eharacteristic shows that it is possible to use Hopfield neural network to get the main factor of dynamic pricingthe least variable cost, from production function principles. The least variable cost is obtained by reducing or increasing the input combination factors, and then making the comparison of the network Output with the desired Output, where the difference between the network output and desired Output will be decreasing in the same manner as in the Hopfield neural network energy. Hopfield neural network will simplify the rapid change of prices in e-commerce during transaction that depends on the demand quantity for demand sensitive model of pricing.
机译:电子商务中购物机器人用户数量的增加触发了卖方在定价策略中的灵活性。 Seilers意识到自动定价的重要性,该定价机制可以为使用购物机器人的大量购买者提供有效的服务。本文研究了在Hopfield神经网络的连续模型中能量随时间减少的特征,这就是网络中的误差随时间的减少。算术表明,可以使用Hopfield神经网络从生产函数原理中获得动态定价的最小可变成本的主要因素。最小的可变成本是通过减少或增加输入组合因子,然后将网络输出与所需输出进行比较而获得的,其中网络输出与所需输出之间的差异将以与Hopfield中相同的方式减小神经网络能量。 Hopfield神经网络将简化交易过程中电子商务价格的快速变化,而交易价格依赖于需求敏感定价模型的需求数量。

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