Deep Choice Model Using Pointer Networks for Airline Itinerary Prediction

Alejandro Mottini, Rodrigo Acuna-Agost
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引用次数: 49

Abstract

Travel providers such as airlines and on-line travel agents are becoming more and more interested in understanding how passengers choose among alternative itineraries when searching for flights. This knowledge helps them better display and adapt their offer, taking into account market conditions and customer needs. Some common applications are not only filtering and sorting alternatives, but also changing certain attributes in real-time (e.g., changing the price). In this paper, we concentrate with the problem of modeling air passenger choices of flight itineraries. This problem has historically been tackled using classical Discrete Choice Modelling techniques. Traditional statistical approaches, in particular the Multinomial Logit model (MNL), is widely used in industrial applications due to its simplicity and general good performance. However, MNL models present several shortcomings and assumptions that might not hold in real applications. To overcome these difficulties, we present a new choice model based on Pointer Networks. Given an input sequence, this type of deep neural architecture combines Recurrent Neural Networks with the Attention Mechanism to learn the conditional probability of an output whose values correspond to positions in an input sequence. Therefore, given a sequence of different alternatives presented to a customer, the model can learn to point to the one most likely to be chosen by the customer. The proposed method was evaluated on a real dataset that combines on-line user search logs and airline flight bookings. Experimental results show that the proposed model outperforms the traditional MNL model on several metrics.
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基于指针网络的航线行程预测深度选择模型
航空公司和在线旅行社等旅游供应商越来越有兴趣了解乘客在搜索航班时如何在不同的行程中做出选择。这些知识有助于他们更好地展示和调整他们的报价,考虑到市场状况和客户需求。一些常见的应用程序不仅过滤和排序替代品,而且还实时更改某些属性(例如,更改价格)。本文主要研究航空旅客的航线选择建模问题。这个问题历来是用经典的离散选择建模技术来解决的。传统的统计方法,特别是多项Logit模型(Multinomial Logit model, MNL),由于其简单和一般良好的性能,在工业应用中得到了广泛的应用。然而,MNL模型提出了一些在实际应用中可能不成立的缺点和假设。为了克服这些困难,我们提出了一种新的基于指针网络的选择模型。给定一个输入序列,这种类型的深度神经结构结合了递归神经网络和注意机制来学习输出的条件概率,其值对应于输入序列中的位置。因此,给定向客户提供的一系列不同的备选方案,模型可以学习指向客户最有可能选择的一个。在结合在线用户搜索日志和航空公司航班预订的真实数据集上对所提出的方法进行了评估。实验结果表明,该模型在多个指标上都优于传统的MNL模型。
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