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Evaluating hotels rating prediction based on sentiment analysis services

机译:基于情感分析服务评估酒店评级预测

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Purpose - The purpose of this paper is to assess the reliability of numerical ratings of hotels calculated by three sentiment analysis algorithms. Design/methodology/approach - More than one million reviews and numerical ratings of hotels in seven cities in four countries were extracted from TripAdvisor web site. Reviews were classified as positive or negative using three sentiment analysis tools. The percentage of positive reviews was used to predict numerical ratings that were then compared with actual ratings. Findings - All tools classified reviews as positive or negative in a way that correlated positively with numerical ratings. More complex algorithms worked better, yet predicted ratings showed reasonable agreement with actual ratings for most cities. Predictions for hotels were less reliable if based on less than 50-60 percent of available reviews. Practical implications - These results validate that sentiment analysis can be used to transform unstructured qualitative data on user opinion into quantitative ratings. Current tools may be useful for summarizing opinions of user reviews of products and services on web sites that do not require users to post numerical ratings such as traveler forums. This summarizing may be valuable not just to potential users, but also to the service and product providers and offers validation and benchmarking for future improvement of opinion mining and prediction techniques. Originality/value - This work assesses the correlation between sentiment analysis of hotels' reviews and their actual ratings. The authors also evaluated the reliability of results of sentiment analysis calculated by three different algorithms.
机译:目的-本文的目的是评估通过三种情感分析算法计算得出的酒店的数字评级的可靠性。设计/方法/方法-从TripAdvisor网站上提取了四个国家/地区中七个城市超过100万条的酒店评论和数字评分。使用三种情绪分析工具将评论分为正面或负面。正面评论的百分比用于预测数字评分,然后将其与实际评分进行比较。调查结果-所有工具均以与数字评级呈正相关的方式将评论分为正面或负面。较复杂的算法效果更好,但大多数城市的预测等级与实际等级显示出合理的一致性。如果基于少于50%的可用评论,对酒店的预测就不太可靠。实际意义-这些结果验证了情感分析可用于将用户意见的非结构化定性数据转换为定量等级。当前的工具对于在不需要用户发布数字等级的网站(例如旅行者论坛)上总结用户对产品和服务的评论的意见可能很有用。这种总结可能不仅对潜在用户有价值,而且对服务和产品提供商也很有价值,并且可以为验证意见和预测技术的未来改进提供验证和基准。创意/价值-这项工作评估了酒店评论的情感分析与其实际评分之间的相关性。作者还评估了通过三种不同算法计算出的情感分析结果的可靠性。

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