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A naive Bayes strategy for classifying customer satisfaction: A study based on online reviews of hospitality services

机译:用于对客户满意度进行分类的朴素贝叶斯策略:一项基于对酒店服务在线评论的研究

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摘要

This research assesses whether terms related to guest experience can be used to identify ways to enhance hospitality services. A study was conducted to empirically identify relevant features to classify customer satisfaction based on 47,172 reviews of 33 Las Vegas hotels registered with Yelp, a social networking site. The resulting model can help hotel managers understand guests' satisfaction. In particular, it can help managers process vast amounts of review data by using a supervised machine learning approach. The naive algorithm classifies reviews of hotels with high precision and recall and with a low computational cost. These results are more reliable and accurate than prior statistical results based on limited sample data and provide insights into how hotels can improve their services based on, for example, staff experience, professionalism, tangible and experiential factors, and gambling-based attractions.
机译:这项研究评估了与客人体验有关的术语是否可以用于确定增强接待服务的方式。根据在社交网站Yelp注册的33家拉斯维加斯酒店的47,172条评论,进行了一项研究以根据经验确定相关特征以对客户满意度进行分类。生成的模型可以帮助酒店管理人员了解客人的满意度。特别是,它可以通过使用受监督的机器学习方法来帮助管理人员处理大量评论数据。朴素的算法对旅馆的评论进行分类,具有很高的准确性和查全率,并且计算成本较低。与基于有限样本数据的先前统计结果相比,这些结果更加可靠和准确,并且可以根据员工的工作经验,专业水平,有形和经验性因素以及基于赌博的吸引力,洞悉酒店如何改善服务。

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