Extended RFM logit model for churn prediction in the mobile gaming market

IF 0.5 Q4 ECONOMICS
Ana Perišić, M. Pahor
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引用次数: 6

Abstract

As markets are becoming increasingly saturated, many businesses are shifting their focus to customer retention. In their need to understand and predict future customer behavior, businesses across sectors are adopting data-driven business intelligence to deal with churn prediction. A good example of this approach to retention management is the mobile game industry. This business sector usually relies on a considerable amount of behavioral telemetry data that allows them to understand how users interact with games. This high-resolution information enables game companies to develop and adopt accurate models for detecting customers with a high attrition propensity. This paper focuses on building a churn prediction model for the mobile gaming market by utilizing logistic regression analysis in the extended recency, frequency and monetary (RFM) framework. The model relies on a large set of raw telemetry data that was transformed into interpretable game-independent features. Robust statistical measures and dominance analysis were applied in order to assess feature importance. Established features are used to develop a logistic model for churn prediction and to classify potential churners in a population of users, regardless of their lifetime.
手机游戏市场流失预测的扩展RFM logit模型
随着市场日益饱和,许多企业正将重点转向客户维系。由于需要了解和预测未来的客户行为,各行业的企业都在采用数据驱动的商业智能来处理客户流失预测。这种留存率管理方法的一个很好的例子就是手机游戏行业。这个业务部门通常依赖于大量的行为遥测数据,让他们了解用户是如何与游戏互动的。这种高分辨率的信息使游戏公司能够开发和采用准确的模型来检测具有高流失倾向的客户。本文主要通过在扩展的RFM框架中使用逻辑回归分析来构建手机游戏市场的流失预测模型。该模型依赖于大量原始遥测数据,这些数据被转化为可解释的游戏独立功能。为了评估特征的重要性,采用了稳健的统计措施和优势分析。已建立的特征用于开发流失预测的逻辑模型,并对用户群体中的潜在流失进行分类,无论其寿命如何。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
5
审稿时长
22 weeks
期刊介绍: Croatian Operational Research Review (CRORR) is the journal which publishes original scientific papers from the area of operational research. The purpose is to publish papers from various aspects of operational research (OR) with the aim of presenting scientific ideas that will contribute both to theoretical development and practical application of OR. The scope of the journal covers the following subject areas: linear and non-linear programming, integer programing, combinatorial and discrete optimization, multi-objective programming, stohastic models and optimization, scheduling, macroeconomics, economic theory, game theory, statistics and econometrics, marketing and data analysis, information and decision support systems, banking, finance, insurance, environment, energy, health, neural networks and fuzzy systems, control theory, simulation, practical OR and applications. The audience includes both researchers and practitioners from the area of operations research, applied mathematics, statistics, econometrics, intelligent methods, simulation, and other areas included in the above list of topics. The journal has an international board of editors, consisting of more than 30 editors – university professors from Croatia, Slovenia, USA, Italy, Germany, Austria and other coutries.
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