Airlines and other industries have been making use of sophisticated Revenue Management Systems to maximize revenue for decades. While improving the different components of these systems has been the focus of numerous studies, estimating the impact of such improvements on the revenue has been overlooked in the literature despite its practical importance. Indeed, quantifying the benefit of a change in a system serves as support for investment decisions. This is a challenging problem as it corresponds to the difference between the generated value and the value that would have been generated keeping the system as before. The latter is not observable. Moreover, the expected impact can be small in relative value. In this paper, we cast the problem as counterfactual prediction of unobserved revenue. The impact on revenue is then the difference between the observed and the estimated revenue. The originality of this work lies in the innovative application of econometric methods proposed for macroeconomic applications to a new problem setting. Broadly applicable, the approach benefits from only requiring revenue data observed for origin-destination pairs in the network of the airline at each day, before and after a change in the system is applied. We report results using real large-scale data from Air Canada. We compare a deep neural network counterfactual predictions model with econometric models. They achieve respectively 1% and 1.1% of error on the counterfactual revenue predictions, and allow to accurately estimate small impacts (in the order of 2%).
翻译:数十年来,航空和其他行业一直在利用先进的收入管理系统来最大限度地增加收入。改进这些系统的不同组成部分一直是许多研究的重点,但估计这些改进对收入的影响却在文献中被忽视,尽管其具有实际重要性。事实上,量化一个系统改变的好处有助于支持投资决策。这是一个具有挑战性的问题,因为它与创造的价值和以前本可以维持该系统的价值之间的差异相对应,后者无法观察。此外,预期的影响在相对价值上可能较小。在本文中,我们将问题列为对未观测收入的反现实预测。然后,对收入的影响是观察到的收入和估计收入之间的差别。这项工作的初衷在于创新地应用宏观经济应用的经济计量方法,以适应新的问题环境。广泛适用,这种方法的好处是仅仅要求每天、在系统改变之前和之后,在航空公司网络中为原产地估定对收入数据进行观察。我们报告的结果是使用来自加拿大航空公司的真正的大规模数据。然后,对收入的影响是观察到的收入与估计收入之间的差别。我们比较了为宏观经济应用的经济计量方法,我们分别将深度的精确的预测与精确的精确的精确的预测结果作了比较。