Estimating Customer Lifetime Value in the E-Commerce Industry Using Multivariate Analysis

Bagaskoro Cahyo Laksono, I. Wulansari
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Abstract

Companies can develop their business using big data to support decision-making. Big data in the e-commerce industry that includes size and speed of high transactions can be used to analyze customer behaviour and predict customer value. Nowadays, companies are starting to develop customer-oriented rather than product-oriented business interests. One way that can be used to determine customer value is by calculating Customer Lifetime Value (CLV). By knowing CLV at the individual level, it will be useful to help decision-makers to develop customer segmentation and resource allocation. It is important to do segmentation or customer grouping that describes customer loyalty groups. Therefore, this research aims to calculate CLV and customer segmentation using the RFM analysis method. The dimensions of forming CLV include the values of Recency, Frequency, and Monetary. In this study, concept of multivariate statistical analysis will be applied, namely K-Means Clustering and factor analysis. Segmentation is done to determine the level of customers. The higher the CLV value, more valuable customer is to maintain. In the end, the customer segmentation method built by author can be used to optimize company's strategy to get maximum profit. This method can be applied to various cases and other companies.
利用多变量分析估算电子商务行业客户生命周期价值
公司可以利用大数据来支持决策。电子商务行业的大数据包括大额交易的规模和速度,可用于分析客户行为和预测客户价值。如今,公司开始发展以客户为导向而不是以产品为导向的商业利益。确定客户价值的一种方法是计算客户终身价值(CLV)。通过了解个人层面的CLV,将有助于决策者制定客户细分和资源分配。做细分或客户分组来描述客户忠诚群体是很重要的。因此,本研究旨在利用RFM分析方法计算CLV和客户细分。形成CLV的维度包括近时性、频率和货币性的值。本研究将运用多元统计分析的概念,即k均值聚类和因子分析。细分是为了确定客户的水平。CLV值越高,越能留住有价值的客户。最后,笔者建立的客户细分方法可以用于优化公司的战略,以获得最大的利润。这种方法可以适用于各种案例和其他公司。
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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