集成机器学习技术在酒店预订系统中的实现

F. Alotaibi
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引用次数: 0

摘要

酒店业有效地支持了更广泛的国民经济。该部门支持国家促进文化活动和改善游客设施的努力。该部门目前正在处理的主要问题是酒店预订取消。因为这个问题对酒店行业的资源配置、劳动力需求、顾客满意度和整体决策过程产生了影响。结果,酒店的声誉、业务流程和财务业绩也可能受到影响。本研究的主要目标是创建一个模型,帮助酒店业做出明智的决策。我们使用Kaggle酒店预订数据集完成了必要的数据预处理和转换过程。此外,我们采用了许多机器学习方法来预测未来的取消请求。此外,本研究使用了许多集成技术,包括投票、堆叠和装袋,以提高模型的准确性。结果表明,该叠加策略优于其他所有模型,准确率为86.76%。本文提出的模型和分析可以帮助酒店部门预测未来可能被取消的请求类型。关键词:酒店预订取消,机器学习,集成机器学习,分类
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Ensemble Machine Learning Techniques on Hotel Reservation System
The hotel industry effectively supports the wider national economy. The sector supports the nation's efforts to promote cultural events and improve visitor amenities. The primary issue this sector is currently dealing with is a hotel booking cancellation. Because of the impact this issue has on the hotel industry's resource allocation, labour needs, customers’ satisfaction, and overall decision-making process. In result, the hotel's reputation, business processes, and financial performance may also suffer. The major goal of this research is to create a model that will help the hotel industry make wise decisions. We completed the necessary data preprocessing and transformation procedures using the Kaggle hotel bookings dataset. Furthermore, we employed a number of machine learning methods to predict the cancellation requests in the future. Additionally, this study used a number of ensemble techniques, including voting, stacking, and bagging, to improve the model's accuracy. The findings showed that the stacking strategy outperformed all other models and had an accuracy rate of 86.76%. The proposed model and analysis discussed in this paper may help the hotel sector forecast the kinds of requests that will likely be cancelled in the future. Keywords—Hotel Booking Cancellation, Machine Learning, Ensemble Machine Learning, Classification
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