Using Sentiment Analysis to Explore the Accommodation Experience in the Sharing Economy through Topic Modeling

H. Bandara, J. Charles, L. S. Lekamge
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Abstract

The rapid proliferation of internet-based technology has made the sharing economy the next e-commerce business model. Recently, sharing economy lodging platforms have gained a significant market share in the tourism and lodging industry. Tourism and hospitality industries are now being significantly disrupted by Airbnb, an online lodging platform. For businesses and customers who utilize these accommodation platforms, online reviews serve as quality indicators, affecting their decisions to make a transaction. Sentiment analysis and text mining can be used to analyze these online reviews to identify various factors embedded in them that can influence how guests perceive lodging in the sharing economy. Peer-to-peer accommodation platforms can benefit from analyzing these aspects since they can utilize the results to streamline their operations and give customers better services. Current research on this domain has only identified a limited number of important factors, such as trust, quality, security, price, cleanliness, and indoor environmental quality. However, there can be many other factors that can affect the accommodation experience. These factors would require further attention. Therefore, in this study a dataset pertaining to the Airbnb platform was considered which contained a total of 401 964 review comments. Word cloud, frequency distribution, and topic modeling were used as data analysis techniques to identify various factors affecting accommodation experience. Results indicate that factors including location, safety, host-guest interaction, amenities, proximity to restaurants and transit options, and apartment uniqueness can be primarily taken into account to give superior services to their clients.
通过主题建模,利用情感分析探索共享经济中的住宿体验
互联网技术的快速发展使得共享经济成为下一个电子商务商业模式。近年来,共享经济住宿平台在旅游住宿行业占据了相当大的市场份额。旅游和酒店业现在正被在线住宿平台爱彼迎(Airbnb)彻底颠覆。对于使用这些住宿平台的企业和客户来说,在线评论可以作为质量指标,影响他们做出交易的决定。情感分析和文本挖掘可以用来分析这些在线评论,以确定其中嵌入的各种因素,这些因素可能会影响客人在共享经济中对住宿的看法。点对点住宿平台可以从这些方面的分析中受益,因为他们可以利用结果来简化他们的运营,并为客户提供更好的服务。目前对这一领域的研究只确定了有限数量的重要因素,如信任、质量、安全、价格、清洁度和室内环境质量。然而,还有许多其他因素会影响住宿体验。这些因素需要进一步注意。因此,在本研究中,我们考虑了一个与Airbnb平台相关的数据集,其中总共包含401 964条评论。使用词云、频率分布和主题建模作为数据分析技术来识别影响住宿体验的各种因素。结果表明,在为客户提供优质服务时,主要考虑的因素包括地理位置、安全性、主客互动、便利设施、靠近餐厅和交通选择以及公寓的独特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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