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Between comments and repeat visit: capturing repeat visitors with a hybrid approach

机译:评论和之间的重复访问:捕获重复访客使用混合方法

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Purpose Understanding customers' revisiting behavior is highlighted in the field of service industry and the emergence of online communities has enabled customers to express their prior experience. Thus, purpose of this study is to investigate customers' reviews on an online hotel reservation platform, and explores their postbehaviors from their reviews. Design/methodology/approach The authors employ two different approaches and compare the accuracy of predicting customers' post behavior: (1) using several machine learning classifiers based on sentimental dimensions of customers' reviews and (2) conducting the experiment consisted of two subsections. In the experiment, the first subsection is designed for participants to predict whether customers who wrote reviews would visit the hotel again (referred to as Prediction), while the second subsection examines whether participants want to visit one of the particular hotels when they read other customers' reviews (dubbed as Decision). Findings The accuracy of the machine learning approaches (73.23%) is higher than that of the experimental approach (Prediction: 58.96% and Decision: 64.79%). The key reasons of users' predictions and decisions are identified through qualitative analyses. Originality/value The findings reveal that using machine learning approaches show the higher accuracy of predicting customers' repeat visits only based on employed sentimental features. With the novel approach of integrating customers' decision processes and machine learning classifiers, the authors provide valuable insights for researchers and providers of hospitality services.
机译:目的了解客户的回顾行为是突出显示领域的服务工业和在线社区的出现使得顾客表达他们之前体验。调查客户的酒店评论在线预订平台,探索他们的postbehaviors从他们的评论。设计/方法/方法作者使用两种不同的方法和比较的准确性预测客户的职务行为:(1)使用一些基于机器学习的分类器客户的评论和情感维度(2)进行实验包括两个部分。分段是专为参与者预测客户是否写评论再次访问酒店(称为预测),而第二个分段检查参与者是否想参观的一个特定的酒店当他们阅读其他客户的评论(称为决策)。机器学习方法的准确性(73.23%)高于实验方法(预测:58.96%和决策:64.79%)。通过定性识别和决策分析。显示,使用机器学习方法预测客户的重复精度高访问仅基于情感特性。客户的决策过程和机器学习分类器,作者提供有价值的见解为研究人员和供应商接待服务。

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