Topline hotels are now shifting into the digital way in how they understand their customers to maintain and ensuring satisfaction. Rather than the conventional way which uses written reviews or interviews, the hotel is now heavily investing in Artificial Intelligence particularly Machine Learning solutions. Analysis of online customer reviews changes the way companies make decisions in a more effective way than using conventional analysis. The purpose of this research is to measure hotel service quality. The proposed approach emphasizes service quality dimensions reviews of the top-5 luxury hotel in Indonesia that appear on the online travel site TripAdvisor based on section Best of 2018. In this research, we use a model based on a simple Bayesian classifier to classify each customer review into one of the service quality dimensions. Our model was able to separate each classification properly by accuracy, kappa, recall, precision, and F-measure measurements. To uncover latent topics in the customer's opinion we use Topic Modeling. We found that the common issue that occurs is about responsiveness as it got the lowest percentage compared to others. Our research provides a faster outlook of hotel rank based on service quality to end customers based on a summary of the previous online review.
翻译:顶层旅馆现在正在转向数字方式,了解客户如何保持和确保满意度。酒店现在不是使用书面评论或访谈的传统方式,而是大量投资于人工智能,特别是机器学习解决方案。对在线客户的分析改变了公司决策方式,而不是常规分析。这一研究的目的是衡量酒店服务质量。拟议方法强调对印度尼西亚5级豪华豪华酒店的服务质量审查,该豪华酒店在2018年最佳旅游网站TripAdvisor上出现。在这项研究中,我们使用一个基于简单的Bayesian分类的模型,将每个客户审查分为服务质量层面之一。我们的模型能够按照准确性、 kapa、回忆、精确度和F度测量标准将每种分类适当区分开来。为了发现客户意见中的潜在话题,我们使用专题模型。我们发现,出现的共同问题是反应能力,因为其获得的百分比比其他最低。我们的研究根据上次在线审查的摘要,根据服务质量向最终客户提供的酒店级别比较快。