Boutique Hotel Service Digitalization: A Business Owner Study

Somatat Na Takuatung, Chokeanand Bussracumpakorn
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Abstract

The COVID-19 pandemic has generated negative, economic impacts on the tourism and leisure sector in Thailand, especially small boutique hotels. These hotels have had to develop more efficient and innovative approaches to meet new normal expectations, for example, contactless service. Digital technologies, such as Machine Learning and Artificial Intelligence, can open new possibilities and opportunities for hotels to digitize their customers’ services. A review of the literature indicated that data important to the management of hotel products and services include Customer Segmentation, Customer Profiling, Menu Engineering, Productivity Indexing, Customer Associations, Forecasting, Energy Consumption, and Room Rates. These characteristics can be examined by machine learning. This study used a mixed qualitative and quantitative research method. The data were gathered by interviewing two boutique hotel owners in Bangkok and collecting the hotels’ data, including online travel booking agents and direct booking logs, for the period April 2016 – September 2021. The analysis was conducted using the booking data from the two hotels: 3946 records from Hotel A and 3948 from Hotel B. In this research, k-means clustering was used to segment hotel guests. Two-class logistic regression and a two-class boosted decision tree were used to predict the prospective customer, while linear regression and decision forest regression were used to forecast the market demand. The findings reveal a model of hotel business owners’ requirements to innovate new service solutions, such as the contactless software solution, that guests can employ for check-in, check-out, order services, and talk to the hotel through the mobile application. This would help hotel owners to manage costs, employees, and customers. The solution also means that hotel managers would no longer need to be involved in the manual implementation of revenue management tasks. This data analytics approach can effectively sift through the signals detected from market variables, discover patterns and anomalies, make predictions for guest arrivals, and calculate optimum prices in real-time, as the market changes.
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精品酒店服务数字化:一项企业主研究
2019冠状病毒病大流行对泰国的旅游和休闲行业,特别是小型精品酒店产生了负面的经济影响。这些酒店必须开发更高效、更创新的方法来满足新的正常期望,例如非接触式服务。数字技术,如机器学习和人工智能,可以为酒店提供新的可能性和机会,使其客户服务数字化。对文献的回顾表明,对酒店产品和服务管理重要的数据包括顾客细分、顾客分析、菜单工程、生产力索引、顾客联系、预测、能源消耗和房价。这些特征可以通过机器学习来检验。本研究采用定性与定量相结合的研究方法。数据是通过采访曼谷的两家精品酒店所有者并收集酒店数据(包括在线旅游预订代理商和直接预订日志)来收集的,时间为2016年4月至2021年9月。分析是使用两家酒店的预订数据进行的:A酒店的3946条记录和b酒店的3948条记录。在本研究中,使用k-means聚类对酒店客人进行细分。采用两类逻辑回归和两类提升决策树对潜在客户进行预测,采用线性回归和决策森林回归对市场需求进行预测。调查结果揭示了酒店业主对创新新服务解决方案(如非接触式软件解决方案)的需求模型,客人可以使用该解决方案办理入住、退房、预订服务,并通过移动应用程序与酒店对话。这将有助于酒店所有者管理成本、员工和客户。该解决方案还意味着酒店经理将不再需要手动执行收入管理任务。这种数据分析方法可以有效地筛选从市场变量中检测到的信号,发现模式和异常,预测客人到达,并根据市场变化实时计算最佳价格。
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