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Data-driven models for itinerary preferences of air travelers and application for dynamic pricing optimization

机译:基于数据的航空旅行者行程偏好模型以及动态定价优化应用

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摘要

There is an increasing interest within the travel industry in better understanding customer behavior, particularly the way customers choose between itinerary alternatives when searching for flights. Such an understanding can help travel providers (e.g., airlines) adapt better to market conditions and customer needs, thus increasing their revenue. In this paper, we deal with the problem of modeling air passenger choice between flight itineraries. We describe a two-stage approach to predict travelers' choice behavior by combining machine learning and discrete choice-modeling techniques. The applicability of these models is then illustrated by employing them for dynamic pricing optimization. We conduct experiments on a dataset extracted from searches and bookings on several European markets, aiming at assessing both the accuracy of our customer models and the effect of price optimization. The proposed approach seems to be effective on both dimensions: (a) improved accuracy when predicting choice, and (b) increased expected revenue of shopping sessions. The experiments show that 42 percent of actual choices fall within the three highest estimated probabilities among 50 alternatives in each shopping session. Moreover, the results also show more than 20 per cent of additional revenue compared with a baseline approach.
机译:更好地了解客户行为,尤其是客户在搜索航班时在行程选择之间进行选择的方式,对旅游业的兴趣与日俱增。这样的理解可以帮助旅行提供商(例如,航空公司)更好地适应市场条件和客户需求,从而增加他们的收入。在本文中,我们处理了在航班行程之间对航空旅客选择进行建模的问题。我们描述了一种通过结合机器学习和离散选择建模技术来预测旅行者选择行为的两阶段方法。然后通过将它们用于动态定价优化来说明这些模型的适用性。我们对从多个欧洲市场的搜索和预订中提取的数据集进行实验,旨在评估我们客户模型的准确性和价格优化的效果。拟议的方法似乎在两个方面都有效:(a)预测选择时提高准确性,(b)增加购物时段的预期收入。实验表明,在每个购物时段中,有42%的实际选择落在50个选择中的三个最高估计概率之内。此外,与基准方法相比,结果还显示出额外收入的20%以上。

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