Segmentation and Formation of Customer Regression Model Based on Recency, Frequency and Monetary Analysis

Ronaldo Cristover, Hapnes Toba, Bernard Suteja
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Abstract

During this pandemic, the number of customers of a securities company has increased quite high. This requires securities companies to conduct analysis related to security customer data against transaction data so that the company can find out the segmentation of registered customers and also so that companies can predict the transaction patterns of customers in the company. In processing transaction data, the RFM (Recency, Frequency, Monetary) model can be used as a way to group customers according to their business values. After doing the modeling using RFM, the data is clustered using the K-Means algorithm to find out the segmentation in the RFM model in each group. The RFM model that has been clustered will produce segments based on the RFM group. In this data, a linear regression analysis process is carried out where each group and segment is analyzed and predicted related to variables such as recency, monetary and frequency. The results of data grouping, customer segmentation and also predictions with linear regression can be one of the company's references to make a business decision. From the linear regression process carried out on the RFM attributes, a prediction of the monetary value of the existing recency value is generated and the monetary value of the frequency can also be known with a fairly good error rate.
基于近代性、频度和货币性分析的顾客回归模型分割与形成
在这次大流行期间,一家证券公司的客户数量增加了很多。这就要求证券公司对交易数据进行证券客户数据的相关分析,从而发现注册客户的细分,从而预测公司客户的交易模式。在处理事务数据时,可以使用RFM (current, Frequency, Monetary)模型根据客户的业务价值对其进行分组。在使用RFM进行建模后,使用K-Means算法对数据进行聚类,找出每组中RFM模型中的分割。已经集群化的RFM模型将基于RFM组生成段。在这些数据中,进行了线性回归分析过程,其中对每个组和部分进行了分析和预测,并与诸如最近,货币和频率等变量相关。数据分组、客户细分和线性回归预测的结果可以成为公司做出商业决策的参考之一。从对RFM属性进行线性回归的过程中,产生了对现有近代值的货币值的预测,也可以知道频率的货币值,错误率相当好。
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