Machine learning-based model for customer emotion detection in hotel booking services

IF 4.8 Q1 HOSPITALITY, LEISURE, SPORT & TOURISM Journal of Hospitality and Tourism Insights Pub Date : 2023-07-17 DOI:10.1108/jhti-03-2023-0166
Nghia Nguyen, Thuy-Hien Nguyen, Yen-Nhi Nguyen, Dung Doan, Minh-Hao Nguyen, Van-Ho Nguyen
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引用次数: 1

Abstract

PurposeThe purpose of this paper is to expand and analyze deeply customer emotions, concretize the levels of positive or negative emotions with the aim of using machine learning methods, and build a model to identify customer emotions.Design/methodology/approachThe study proposed a customer emotion detection model and data mining method based on the collected dataset, including 80,593 online reviews on agoda.com and booking.com from 2009 to 2022.FindingsBy discerning specific emotions expressed in customers' comments, emotion detection, which refers to the process of identifying users' emotional states, assumes a crucial role in evaluating the brand value of a product. The research capitalizes on the vast and diverse data sources available on hotel booking websites, which, despite their richness, remain largely unexplored and unanalyzed. The outcomes of the model, pertaining to the detection and classification of customer emotions based on ratings and reviews into four distinct emotional states, offer a means to address the challenge of determining customer satisfaction regarding their actual service experiences. These findings hold substantial value for businesses operating in this domain, as the findings facilitate the evaluation and formulation of improvement strategies within their business models. The experimental study reveals that the proposed model attains an exact match ratio, precision, and recall rates of up to 81%, 90% and 90%, respectively.Research limitations/implicationsThe study has yet to mine real-time data. Prediction results may be influenced because the amount of data collected from the web is insufficient and preprocessing is not completely suppressed. Furthermore, the model in the study was not tested using all algorithms and multi-label classifiers. Future research should build databases to mine data in real-time and collect more data and enhance the current model.Practical implicationsThe study's results suggest that the emotion detection models can be applied to the real world to quickly analyze customer feedback. The proposed models enable the identification of customers' emotions, the discovery of customer demand, the enhancement of service, and the general customer experience. The established models can be used by many service sectors to learn more about customer satisfaction with the offered goods and services from customer reviews.Social implicationsThe research paper helps businesses in the hospitality area analyze customer emotions in each specific aspect to ensure customer satisfaction. In addition, managers can come up with appropriate strategies to bring better products and services to society and people. Subsequently, fostering the growth of the hotel tourism sector within the nation, thereby facilitating sustainable economic development on a national scale.Originality/valueThis study developed a customer emotions detection model for detecting and classifying customer ratings and reviews as 4 specific emotions: happy, angry, depressed and hopeful based on online booking hotel websites agoda.com and booking.com that contains 80,593 reviews in Vietnamese. The research results help businesses check and evaluate the quality of their services, thereby offering appropriate improvement strategies to increase customers' satisfaction and demand more effectively.
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基于机器学习的酒店预订服务客户情绪检测模型
本文的目的是利用机器学习方法对客户情绪进行深入的扩展和分析,将积极或消极情绪的层次具体化,并建立一个识别客户情绪的模型。设计/方法/方法本研究基于收集到的数据集(包括agoda.com和booking.com 2009 - 2022年的80593条在线评论),提出了一种客户情感检测模型和数据挖掘方法。通过识别顾客评论中表达的特定情绪,情感检测是指识别用户情绪状态的过程,在评估产品的品牌价值中起着至关重要的作用。该研究利用了酒店预订网站上庞大而多样的数据来源,尽管这些数据来源丰富,但在很大程度上仍未被探索和分析。该模型的结果,涉及到基于评级和评论的客户情绪的检测和分类,分为四种不同的情绪状态,提供了一种方法来解决确定客户对其实际服务体验的满意度的挑战。这些发现对于在这个领域中运作的企业具有重要的价值,因为这些发现有助于在其业务模型中评估和制定改进策略。实验研究表明,该模型的精确匹配率、准确率和召回率分别达到81%、90%和90%。研究局限/启示该研究尚未挖掘实时数据。预测结果可能会受到影响,因为从网络上收集的数据量不足,预处理没有完全抑制。此外,研究中的模型没有使用所有算法和多标签分类器进行测试。未来的研究应该建立数据库,实时挖掘数据,收集更多的数据,完善现有的模型。实际意义研究结果表明,情感检测模型可以应用于现实世界,快速分析客户反馈。所提出的模型能够识别顾客的情绪,发现顾客的需求,提高服务,并提供一般的顾客体验。建立的模型可以被许多服务部门用来从顾客评论中更多地了解顾客对所提供的商品和服务的满意度。社会意义该研究论文帮助酒店领域的企业分析客户在每个特定方面的情绪,以确保客户满意度。此外,管理者可以提出适当的策略,为社会和人民带来更好的产品和服务。随后,促进国内酒店旅游业的增长,从而促进全国范围内的可持续经济发展。原创/价值本研究开发了一个客户情绪检测模型,用于检测和分类客户评分和评论为4种特定的情绪:快乐,愤怒,沮丧和希望。该模型基于在线预订酒店网站agoda.com和booking.com,其中包含80,593条越南语评论。研究结果有助于企业检查和评估其服务质量,从而提供适当的改进策略,以更有效地提高客户的满意度和需求。
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来源期刊
Journal of Hospitality and Tourism Insights
Journal of Hospitality and Tourism Insights HOSPITALITY, LEISURE, SPORT & TOURISM-
CiteScore
6.30
自引率
33.30%
发文量
88
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