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K- local maximum margin feature extraction algorithm for churn prediction in telecom

机译:k-局部最大裕度特征提取算法,用于电信中搅拌预测

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摘要

Telecom customer churn data is not publicly available because involving users' personal privacy. In 2009, the French telecommunications company Orange for knowledge discovery and data mining (KDD) competition provides a telecom customer churn data set KDD Cup 09. In order to solve the high dimensional problem of KDD Cup 09, a new feature reduction method is used to explore the influence of different features on the prediction of classification model. In this paper, a new K- local maximum margin feature extraction algorithm (KLMM) is proposed. Through researching on the diversification subspace partition rules, the corresponding potential field structure is constructed. According to the data source in the dimension of scalability, the intrinsic link between data attributes and classification results is revealed. The extracted features can reduce the dimension of the churn prediction in telecom data. The KLMM method adapts auto selection sigma factor to reflect the anisotropy of features. The potential function is used to assess the weights of attributes and find the potential important weight. Experiments and analysis show that the extracted features by KLMM are more likely to find a classification hyperplane which can separate data points of the different classes.
机译:电信客户流失数据不公开可用,因为涉及用户的个人隐私。 2009年,法国电信公司橙色的知识发现和数据挖掘(KDD)竞争提供了电信客户流失数据集KDD杯09.为了解决KDD杯09的高维问题,使用新的特征减少方法探讨不同特征对分类模型预测的影响。本文提出了一种新的K-局部最大边缘特征提取算法(KLMM)。通过研究多样化子空间分区规则,构建了相应的潜在场结构。根据可伸缩性维度的数据源,揭示了数据属性和分类结果之间的内在链接。提取的特征可以减少电信数据中搅拌预测的维度。 KLMM方法适应自动选择Sigma因子以反映特征的各向异性。潜在功能用于评估属性的权重,找到潜在的重要重量。实验和分析表明,KLMM提取的特征更有可能找到可以分离不同类别的数据点的分类超平面。

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