Data Analytics for Air Travel Data: A Survey and New Perspectives

Haiman Tian, Maria Presa-Reyes, Yudong Tao, Tianyi Wang, Samira Pouyanfar, Alonso Miguel, Steven Luis, M. Shyu, Shu‐Ching Chen, S. S. Iyengar
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引用次数: 9

Abstract

From the start, the airline industry has remarkably connected countries all over the world through rapid long-distance transportation, helping people overcome geographic barriers. Consequently, this has ushered in substantial economic growth, both nationally and internationally. The airline industry produces vast amounts of data, capturing a diverse set of information about their operations, including data related to passengers, freight, flights, and much more. Analyzing air travel data can advance the understanding of airline market dynamics, allowing companies to provide customized, efficient, and safe transportation services. Due to big data challenges in such a complex environment, the benefits of drawing insights from the air travel data in the airline industry have not yet been fully explored. This article aims to survey various components and corresponding proposed data analysis methodologies that have been identified as essential to the inner workings of the airline industry. We introduce existing data sources commonly used in the papers surveyed and summarize their availability. Finally, we discuss several potential research directions to better harness airline data in the future. We anticipate this study to be used as a comprehensive reference for both members of the airline industry and academic scholars with an interest in airline research.
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航空旅行数据的数据分析:调查与新视角
从一开始,航空业就通过快速的长途运输将世界各国联系在一起,帮助人们克服地理障碍。因此,这在国内和国际上都带来了可观的经济增长。航空业产生了大量的数据,捕获了关于其运营的各种信息,包括与乘客、货运、航班等相关的数据。分析航空旅行数据可以促进对航空市场动态的理解,使公司能够提供定制的、高效的和安全的运输服务。在如此复杂的环境下,由于大数据的挑战,从航空旅行数据中获取见解的好处尚未得到充分挖掘。本文旨在调查各种组成部分和相应的拟议数据分析方法,这些方法已被确定为航空业内部运作的关键。我们介绍了调查论文中常用的现有数据源,并总结了它们的可用性。最后,我们讨论了未来更好地利用航空公司数据的几个潜在研究方向。我们期望这项研究能为航空业成员和对航空研究感兴趣的学术学者提供全面的参考。
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