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Bayesian estimation of hazard models of airline passengers' cancellation behavior

机译:贝叶斯估计的航空公司旅客取消行为的危害模型

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This study explores the use of Bayesian methods to estimate hazard models of airline passengers' cancellation behavior. We show how the discrete time proportional odds (DTPO) cancellation model can be rewritten as an equivalent fixed parameter discrete choice model that can be easily estimated using Bayesian methods and extended to random parameters that account for unobserved heterogeneity. The use of Bayesian methods allows us to address several limitations of existing airline cancellation models. First, because of the random parameter reformulation, it is possible to calculate individual specific cancellation probabilities. Second, unlike existing DTPO models that forecast average cancellation probabilities only, our model can be used to forecast both means and a measure of variance (credible intervals) associated with an individual's cancellation probability. We apply the Bayesian estimation method to a dataset of tickets purchased over a two-year period by employees of a university in Atlanta, Georgia. During this time period, the major carrier in Atlanta terminated an agreement in which it allowed employees to purchase discounted fares that could be refunded or exchanged without a fee. The data allow us to investigate how passenger cancellation behavior changed when these fares were discontinued. Cancellations are reduced on average 3.3% when customers must pay to exchange their tickets. For a simulated hypothetical flight the coefficient of variation of cancellation is 43% when the state rate was offered, and 83% without state rates. (C) 2016 Elsevier Ltd. All rights reserved.
机译:这项研究探索了使用贝叶斯方法来估计航空公司乘客取消行为的危险模型。我们展示了如何将离散时间比例赔率(DTPO)抵消模型改写为等效的固定参数离散选择模型,该模型可以使用贝叶斯方法轻松估算,并扩展到说明未观察到的异质性的随机参数。贝叶斯方法的使用使我们能够解决现有航空公司取消模型的一些限制。首先,由于重新设置了随机参数,因此可以计算出各个特定的抵消概率。其次,与现有的DTPO模型仅预测平均抵消概率不同,我们的模型可用于预测与个人抵消概率相关的均值和方差(可信区间)度量。我们将贝叶斯估计方法应用于乔治亚州亚特兰大的一所大学的员工在两年内购买的车票数据集。在此期间,亚特兰大一家主要航空公司终止了一项协议,该协议允许员工购买打折的票价,这些票价可以免费退款或交换。数据使我们能够研究在这些票价中断后乘客取消行为如何变化。当客户必须付款以交换机票时,取消的平均费用将减少3.3%。对于模拟的假设飞行,提供状态费率时,抵消变化系数为43%,不提供状态费率时为83%。 (C)2016 Elsevier Ltd.保留所有权利。

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