V(CLV):检验客户终身价值模型的方差

D. McCarthy, P. Fader, Bruce G. S. Hardie
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引用次数: 9

摘要

虽然客户生命周期价值(CLV)的准确点估计一直是大量学术研究的目标,但很少有人关注CLV的方差(V(CLV)),它表示与客户期望的CLV相关的不确定性程度。这很讽刺,因为学者们早就知道,V(CLV)是定义和区分客户的最重要特征之一,在许多基本层面上影响着公司。没有封闭的、前瞻性的统计程序来估计个人水平的V(CLV)。作者首次使用一种强大的随机模型组合来推导、预测和验证V(CLV),该模型用于一段时间内的交易流和公司每笔交易的利润。他们对一家全渠道零售商的56.11万名顾客进行了2.25年的跟踪调查,使其成为迄今为止规模最大的CLV分析之一。他们强调了V(CLV)的重要性,分析了它与可观察的汇总统计数据(如近代性、频率和货币价值)的关系,并揭示了许多与方差相关的实质性见解,包括客户细分、评分、目标定位等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
V(CLV): Examining Variance in Models of Customer Lifetime Value
While accurate point estimation of customer lifetime value (CLV) has been the target of a large body of academic research, few have focused on the variance of CLV (V(CLV)), which represents the degree of uncertainty associated with a customer's expected CLV. This is ironic because academics have long known that V(CLV) is one of the most important characteristics that defines and differentiates customers from one another, affecting firms on many fundamental levels. No closed-form, forward-looking statistical procedures have been derived to estimate individual-level V(CLV). For the first time, the authors derive, predict, and validate V(CLV) using a powerful combination of stochastic models for the flow of transactions over time and the company's profit on each transaction. They provide these estimates for 561,100 customers of an omnichannel retailer tracked over a 2.25-year period, making this one of the largest-scale CLV analyses to date. They highlight the importance of V(CLV), analyze its relationship to observable summary statistics such as recency, frequency, and monetary value, and uncover many substantive variance-related insights regarding customer segmentation, scoring, targeting, and more.
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