Customer-Base Analysis in a Discrete-Time Noncontractual Setting

P. Fader, Bruce G. S. Hardie, J. Shang
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引用次数: 142

Abstract

Many businesses track repeat transactions on a discrete-time basis. These include (1) companies for whom transactions can only occur at fixed regular intervals, (2) firms that frequently associate transactions with specific events (e.g., a charity that records whether supporters respond to a particular appeal), and (3) organizations that choose to utilize discrete reporting periods even though the transactions can occur at any time. Furthermore, many of these businesses operate in a noncontractual setting, so they have a difficult time differentiating between those customers who have ended their relationship with the firm versus those who are in the midst of a long hiatus between transactions. We develop a model to predict future purchasing patterns for a customer base that can be described by these structural characteristics. Our beta-geometric/beta-Bernoulli (BG/BB) model captures both of the underlying behavioral processes (i.e., customers' purchasing while “alive” and time until each customer permanently “dies”). The model is easy to implement in a standard spreadsheet environment and yields relatively simple closed-form expressions for the expected number of future transactions conditional on past observed behavior (and other quantities of managerial interest). We apply this discrete-time analog of the well-known Pareto/NBD model to a data set on donations made by the supporters of a nonprofit organization located in the midwestern United States. Our analysis demonstrates the excellent ability of the BG/BB model to describe and predict the future behavior of a customer base.
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离散时间非契约环境下的顾客基础分析
许多企业在离散时间的基础上跟踪重复交易。这些包括(1)交易只能在固定的定期间隔内发生的公司,(2)经常将交易与特定事件联系起来的公司(例如,记录支持者是否响应特定呼吁的慈善机构),以及(3)选择使用离散报告期间的组织,即使交易可以在任何时间发生。此外,这些企业中有许多是在非合同环境中运营的,因此他们很难区分哪些客户已经结束了与公司的关系,哪些客户处于交易之间的长期中断中。我们开发了一个模型来预测客户基础的未来购买模式,可以用这些结构特征来描述。我们的β -几何/ β -伯努利(BG/BB)模型捕获了两个潜在的行为过程(即,客户在“活着”时的购买行为和每个客户永久“死亡”之前的时间)。该模型很容易在标准电子表格环境中实现,并为基于过去观察到的行为(以及管理兴趣的其他数量)的未来交易的预期数量生成相对简单的封闭形式表达式。我们将这种著名的帕累托/NBD模型的离散时间模拟应用于位于美国中西部的一家非营利组织的支持者捐赠的数据集。我们的分析证明了BG/BB模型在描述和预测客户群未来行为方面的卓越能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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