Alsayat Ahmed
Department of Computer Science, College of Computer and Information Sciences, Jouf University, 72388 Sakaka, Kingdom of Saudi Arabia.
Neural Comput Appl. 2023;35(6):4701-4722. doi: 10.1007/s00521-022-07992-x. Epub 2022 Oct 28.
Big social data and user-generated content have emerged as important sources of timely and rich knowledge to detect customers' behavioral patterns. Revealing customer satisfaction through the use of user-generated content has been a significant issue in business, especially in the tourism and hospitality context. There have been many studies on customer satisfaction that take quantitative survey approaches. However, revealing customer satisfaction using big social data in the form of eWOM (electronic word of mouth) can be an effective way to better understand customers' demands. In this study, we aim to develop a hybrid methodology based on supervised learning, text mining, and segmentation machine learning approaches to analyze big social data on travelers' decision-making regarding hotels in Mecca, Saudi Arabia. To do so, we use support vector regression with sequential minimal optimization (SMO), latent Dirichlet allocation (LDA), and -means approaches to develop the hybrid method. We collect data from travelers' online reviews of Mecca hotels on TripAdvisor. The data are segmented, and travelers' satisfaction is revealed for each segment based on their online reviews of hotels. The results show that the method is effective for big social data analysis and traveler segmentation in Mecca hotels. The results are discussed, and several recommendations and strategies for hotel managers are provided to enhance their service quality and improve customer satisfaction.
大型社交数据和用户生成内容已成为检测客户行为模式的及时且丰富的重要知识来源。通过使用用户生成内容来揭示客户满意度一直是商业领域的一个重要问题,尤其是在旅游和酒店业背景下。已有许多关于客户满意度的研究采用定量调查方法。然而,以电子口碑(eWOM)形式使用大型社交数据来揭示客户满意度可能是更好地了解客户需求的有效方式。在本研究中,我们旨在开发一种基于监督学习、文本挖掘和分段机器学习方法的混合方法,以分析关于沙特阿拉伯麦加酒店旅行者决策的大型社交数据。为此,我们使用带序列最小优化(SMO)的支持向量回归、潜在狄利克雷分配(LDA)和K均值方法来开发混合方法。我们从旅行者在猫途鹰(TripAdvisor)上对麦加酒店的在线评论中收集数据。对数据进行分段,并根据旅行者对酒店的在线评论揭示每个分段的旅行者满意度。结果表明,该方法对麦加酒店的大型社交数据分析和旅行者分段是有效的。对结果进行了讨论,并为酒店经理提供了一些建议和策略,以提高他们的服务质量并提升客户满意度。