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Computing Virtual Nesting Controls for Network Revenue Management Under Customer Choice Behavior

机译:计算客户选择行为下网络收入管理的虚拟嵌套控件

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We consider a revenue management, network capacity control problem in a setting where heterogeneous customers choose among the various products offered by a firm (e.g., different flight times, fare classes, and/or routings). Customers may therefore substitute if their preferred products are not offered. These individual customer choice decisions are modeled as a very general stochastic sequence of customers, each of whom has an ordered list of preferences. Minimal assumptions are made about the statistical properties of this demand sequence. We assume that the firm controls the availability of products using a virtual nesting control strategy and would like to optimize the protection levels for its virtual classes accounting for the (potentially quite complex) choice behavior of its customers. nnWe formulate a continuous demand and capacity approximation for this problem, which allows for the partial acceptance of requests for products. The model admits an efficient calculation of the sample path gradient of the network revenue function. This gradient is then used to construct a stochastic steepest ascent algorithm. We show the algorithm converges in probability to a stationary point of the expected revenue function under mild conditions. The algorithm is relatively efficient even on large network problems, and in our simulation experiments it produces significant revenue increases relative to traditional virtual nesting methods. On a large-scale, real-world airline example using choice behavior models fit to actual booking data, the method produced an estimated 10% improvement in revenue relative to the controls used by the airline. The examples also provide interesting insights into how protection levels should be adjusted to account for choice behavior. Overall, the results indicate that choice behavior has a significant impact on both capacity control decisions and revenue performance and that our method is a viable approach for addressing the problem.
机译:在异构客户从公司提供的各种产品中进行选择的情况下(例如,不同的飞行时间,票价等级和/或航线),我们考虑了收入管理,网络容量控制问题。因此,如果没有提供他们喜欢的产品,客户可以替代。这些单独的客户选择决策被建模为非常随机的客户序列,每个客户都有一个有序的偏好列表。关于此需求序列的统计属性的假设最少。我们假设该公司使用虚拟嵌套控制策略来控制产品的可用性,并且希望针对其虚拟类(考虑到其客户的选择行为(可能相当复杂))优化保护级别。 nn我们针对此问题制定了一个连续的需求和容量近似值,从而可以部分接受产品需求。该模型允许有效计算网络收入函数的样本路径梯度。然后使用此梯度来构造随机最陡的上升算法。我们显示了算法在温和条件下的概率收敛到预期收益函数的固定点。即使在大型网络问题上,该算法也相对有效,并且在我们的仿真实验中,与传统的虚拟嵌套方法相比,该算法可显着增加收益。在大规模,真实世界的航空公司示例中,使用的选择行为模型适合实际的预订数据,相对于航空公司使用的控件,该方法在收入方面估计可提高10%。这些示例还提供了有关如何调整保护级别以解决选择行为的有趣见解。总体而言,结果表明选择行为对容量控制决策和收益绩效都有重大影响,并且我们的方法是解决问题的可行方法。

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