The Research on the Data Mining Technology in the Active Demand Management

Chen Xuemei, Gao Li, Wang Xi, Wei Zhonghua, Z. Zhenhua, Liao Zhigao
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引用次数: 3

Abstract

The traditional K-Means algorithm is sensitive to outliers, outliers traction and easy off-center, and overlap of classes can not very well show their classification. This paper introduces a variant of the probability distribution theory, K-Means clustering algorithm - Gaussian mixture model to part of the customer data randomly selected of Volkswagen dealer in a Beijing office in 2008, for example, and carry out empirical study based on the improved clustering algorithm model. The results showed that: data mining clustering algorithm in active demand management and market segmentation has important significance.
主动需求管理中的数据挖掘技术研究
传统的K-Means算法对离群点敏感,离群点牵引力大,容易偏离中心,类的重叠不能很好地显示其分类。本文以2008年大众汽车北京办事处经销商随机抽取的部分客户数据为例,将概率分布理论的一种变体K-Means聚类算法-高斯混合模型引入其中,并基于改进的聚类算法模型进行实证研究。结果表明:数据挖掘聚类算法在主动需求管理和市场细分中具有重要意义。
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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