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Apply Data Mining Approach to Identify Non-revisit Factors for Hotel Industry

机译:应用数据挖掘方法以确定酒店业的非重新评估因素

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The development of social media has changed the way that travelers visit sightseeing spots. In tourism and hospitality industry, to enhance the revisit intention of passengers is an important issue for the purpose of increasing margin. In recent years, related researches had focused on the customers' revisit behaviors and factors. But, few studies have investigated the related issues that travelers do not want to visit again. Failure to revisit may bring a great damage to the company's revenue in the future. To avoid the occurrence of these injuries, a text mining approach will be employed to discover the reason why customers don't revisit from online textual reviews in sodal media. In this work, we attempt to define the candidate factors that may influence the non-revisit, and then use two feature selection methods, decision tree and Support Vector Machines -Recursive Feature Elimination (SVM-RFE) to find the crucial factors. Experimental results could be provided to travel service providers to improve service quality and effectively avoid future impact on passengers no longervisiting.
机译:社交媒体的发展改变了旅行者访问观光景点的方式。在旅游和酒店业,为了提升乘客的重新审视意图是增加保证金的重要问题。近年来,相关研究专注于客户的重新审视行为和因素。但是,很少有研究调查了旅行者不想再次访问的相关问题。未能重新审视可能会对未来公司的收入带来巨大损害。为了避免这些伤害的发生,将采用文本挖掘方法来发现客户不重新审视SODAL媒体的在线文本评论的原因。在这项工作中,我们试图定义可能影响非重新审视的候选​​因素,然后使用两个特征选择方法,决策树和支持向量机 - 持有权限特征消除(SVM-RFE)以找到关键因素。可以向旅行服务提供商提供实验结果,以提高服务质量,有效地避免对乘客的未来影响没有长足。

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