基于酒店在线评论的消费者服务质量研究

Yutong Lu, Yanling Huang, Haitao Yu, Yu-Chen Lan
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引用次数: 0

摘要

互联网技术的发展改变了游客的旅游方式。越来越多的人从互联网上获取信息,这给旅游业带来了巨大的变化。酒店作为旅游业的关键行业也是如此。如何在激烈的市场竞争中脱颖而出,满足客户的多样化需求是当前的一个重要问题。本文以“携程网集团”对重庆五星级酒店的14万多条中文评论数据为研究对象,利用机器学习算法进行主题挖掘和情感分析,根据在线评论文本的特点分析客户需求和偏好。结果表明,除了酒店的位置、餐饮、装修、清洁、住房设施等硬件设施外,消费者更关注酒店员工的服务和态度等软件设施。本研究降低了游客购买决策的风险,为酒店管理者开展管理和营销策略提供了重要参考,拓展了点评大数据和自然语言处理在酒店行业大数据分析中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on consumer service quality based on hotel online reviews
The development of Internet technology has changed the way of travel for tourists. More and more people get information from the Internet, which has brought great changes to the tourism industry. The same is true of hotels as a key industry in the tourism industry. How to stand out from the fiercely competitive market and meet the diverse needs of customers is an important issue at present. This paper takes the data of more than 140,000 Chinese reviews of five-star hotels in Chongqing on the "Trip.com Group" as the research object, uses machine learning algorithms to conduct topic mining and sentiment analysis, and analyzes customer needs and preferences according to the characteristics of online review texts. The results show that in addition to the location, meals, decoration, cleaning, housing facilities and other hardware facilities of the hotel, consumers pay more attention to the software facilities such as the service and attitude of hotel staff. The research reduces the risk of tourists’ purchase decision, provides an important reference for hotel managers to carry out management and marketing strategies, and expands the application of review big data and natural language processing in the hotel industry in the analysis of big data.
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