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Topic modelling and hotel rating prediction based on customer review in Indonesia

机译:基于顾客评论的主题建模与酒店评级预测

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The growth of the tourism sector and the use of hotel online booking platforms lead to the creation of textual data sources in the form of customer review. Motivation of this study is to add value to the customer review, using more than 50,000 samples taken from 510 hotels across Indonesia. First added value is understanding most talked topics by hotel customers. Using topic model latent Dirichlet allocation (LDA), this study revealed that services, price/food, facility, comfort and location are the most talked topics. Secondly, numerical hotel rating is derived from textual data using ridge regression. In addition, regression coefficient indicates the sentiment of each word in the customer review. Finally, the output of this study is expected to be useful for customers in assessing hotel service quality and in making booking decisions, and for hotel operators to get additional input during management decision making.
机译:旅游部门的增长和酒店在线预订平台的使用导致了以客户审查的形式创建了文本数据来源。 本研究的动机是为了向客户审查增加价值,使用来自印度尼西亚两岸的510家510家酒店。 首次增加值是理解酒店客户的最讨论的主题。 本研究透露了使用主题模型潜伏Dirichlet分配(LDA),揭示了服务,价格/食品,设施,舒适和位置是最讨论的主题。 其次,数值酒店评级来自使用ridge回归的文本数据。 此外,回归系数表示客户审查中每个单词的情绪。 最后,预计本研究的产出将对客户提供评估酒店服务质量和预订决策,以及酒店运营商在管理决策期间获得额外投入的措施。

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