应用机器学习算法预测酒店入住率

IF 2.6 3区 经济学 Q1 Business, Management and Accounting
Konstantins Kozlovskis, Yuanyuan Liu, Natalja Lace, Yun Meng
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引用次数: 0

摘要

信息技术的发展和可用性以及内部IT系统与外部IT系统深度集成的可能性,为基于外部数据提供者的在线数据分析提供了强大的机会。最近,机器学习算法在预测不同的过程中发挥了重要作用。本研究旨在应用几种机器学习算法来预测中国酒店的高每日酒店入住率。优化了5个机器学习模型(bagged CART、bagged MARS、XGBoost、random forest、SVM)并应用于入住率预测。使用不同的模型精度度量和选择一个ARDL模型作为比较基准,对所有模型进行比较。结果发现,袋装CART模型的相关性最强(R2 >0.50),但不能优于传统的ARDL模型。因此,尽管最初使用机器学习算法来解决回归任务,但本研究中使用的模型可能比基准模型更有效。此外,使用变量的重要性来检验百度搜索指数及其组成部分可以用于机器学习模型预测酒店入住率的假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APPLICATION OF MACHINE LEARNING ALGORITHMS TO PREDICT HOTEL OCCUPANCY
The development and availability of information technology and the possibility of deep integration of internal IT systems with external ones gives a powerful opportunity to analyze data online based on external data providers. Recently, machine learning algorithms play a significant role in predicting different processes. This research aims to apply several machine learning algorithms to predict high frequent daily hotel occupancy at a Chinese hotel. Five machine learning models (bagged CART, bagged MARS, XGBoost, random forest, SVM) were optimized and applied for predicting occupancy. All models are compared using different model accuracy measures and with an ARDL model chosen as a benchmark for comparison. It was found that the bagged CART model showed the most relevant results (R2 > 0.50) in all periods, but the model could not beat the traditional ARDL model. Thus, despite the original use of machine learning algorithms in solving regression tasks, the models used in this research could have been more effective than the benchmark model. In addition, the variables’ importance was used to check the hypothesis that the Baidu search index and its components can be used in machine learning models to predict hotel occupancy.
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来源期刊
CiteScore
5.80
自引率
3.80%
发文量
48
审稿时长
15 weeks
期刊介绍: The Journal of Business Economics and Management is a peer-reviewed journal which publishes original research papers. The objective of the journal is to provide insights into business and strategic management issues through the publication of high quality research from around the world. We particularly focus on research undertaken in Western Europe but welcome perspectives from other regions of the world that enhance our knowledge in this area. The journal publishes in the following areas of research: Global Business Transition Issues Economic Growth and Development Economics of Organizations and Industries Finance and Investment Strategic Management Marketing Innovations Public Administration.
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