Using machine learning methods to predict future churners: an analysis of repeat hotel customers

IF 9.1 1区 管理学 Q1 HOSPITALITY, LEISURE, SPORT & TOURISM International Journal of Contemporary Hospitality Management Pub Date : 2024-04-10 DOI:10.1108/ijchm-06-2023-0844
Aslıhan Dursun-Cengizci, Meltem Caber
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引用次数: 0

Abstract

Purpose

This study aims to predict customer churn in resort hotels by calculating the churn probability of repeat customers for future stays in the same hotel brand.

Design/methodology/approach

Based on the recency, frequency, monetary (RFM) paradigm, random forest and logistic regression supervised machine learning algorithms were used to predict churn behavior. The model with superior performance was used to detect potential churners and generate a priority matrix.

Findings

The random forest algorithm showed a higher prediction performance with an 80% accuracy rate. The most important variables were RFM-based, followed by hotel sector-specific variables such as market, season, accompaniers and booker. Some managerial strategies were proposed to retain future churners, clustered as “hesitant,” “economy,” “alternative seeker,” and “opportunity chaser” customer groups.

Research limitations/implications

This study contributes to the theoretical understanding of customer behavior in the hospitality industry and provides valuable insight for hotel practitioners by demonstrating the methods that facilitate the identification of potential churners and their characteristics.

Originality/value

Most customer retention studies in hospitality either concentrate on the antecedents of retention or customers’ revisit intentions using traditional methods. Taking a unique place within the literature, this study conducts churn prediction analysis for repeat hotel customers by opening a new area for inquiry in hospitality studies.

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使用机器学习方法预测未来流失者:对酒店回头客的分析
目的本研究旨在通过计算老顾客未来入住同一酒店品牌的流失概率,预测度假酒店的顾客流失情况。设计/方法/途径基于重复性、频率、货币(RFM)范式,使用随机森林和逻辑回归监督机器学习算法来预测顾客流失行为。结果随机森林算法显示出较高的预测性能,准确率达到 80%。最重要的变量是基于 RFM 的变量,其次是酒店行业的特定变量,如市场、季节、陪同者和预订者。研究限制/意义本研究有助于从理论上理解酒店业的顾客行为,并通过展示有助于识别潜在顾客及其特征的方法,为酒店从业人员提供有价值的见解。原创性/价值酒店业的大多数顾客挽留研究要么集中于顾客挽留的前因,要么使用传统方法研究顾客的再次光顾意图。本研究在文献中独树一帜,对酒店回头客进行流失预测分析,为酒店业研究开辟了一个新的探索领域。
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来源期刊
CiteScore
16.90
自引率
31.50%
发文量
239
期刊介绍: The International Journal of Contemporary Hospitality Management serves as a conduit for disseminating the latest developments and innovative insights into the management of hospitality and tourism businesses globally. The journal publishes peer-reviewed papers that comprehensively address issues pertinent to strategic management, operations, marketing, finance, and HR management in the field of hospitality and tourism.
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