基于因子分析和数据挖掘的电信客户缺失信息补全模型研究

Zeng Rui, H. Yin, Jinyan Cai
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引用次数: 0

摘要

电信企业客户流失分析与预测必须解决的关键问题是客户流失数据的补全。本文提出了一种基于因子分析和数据挖掘的客户缺失数据补全模型。该模型首先对缺失数据生成的因子进行补全,然后对缺失数据进行补全。在因子补全方面,采用改进的K -mean算法有效地解决了初始值和K值的选择问题,并改进了欧几里得距离,实现了因子的有效聚类和因子补全。缺失数据值通过因子逆向推理得到。用真实历史数据对模型进行了训练,并对模型进行了测试,验证了模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the Model of Missing Information Completion of Telecom Customers Based on Factor Analysis and Data Mining
The key problem that must be solved in the analysis and prediction of customer churn in telecom companies is the data completion of customer missing. In this paper, a model based on factor analysis and data mining is proposed to complete customer missing data. This model first completes the factors generated by the missing data, and then completes the missing data. In factor completion, the improved k-mean algorithm is used to effectively solve the problem of initial value and K value selection, and the Euclidean distance is improved to achieve effective clustering of factors and factor completion. The missing data value is obtained by factor reverse reasoning. The model is trained with real historical data and tested to verify that the model is effective.
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