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Comparison of three data mining algorithms for potential 4G customers prediction

机译:三种数据挖掘算法对潜在的4G客户预测的比较

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摘要

The size and number of telecom databases are growing quickly but most of the data has not been analyzed for revealing the hidden and valuable intellectual. Models developed from data mining techniques are useful for telecom to make right prediction. The dataset contains one million customers from a telecom company. We implement data mining techniques, i.e., AdaboostM1 (ABM) algorithm, Naive Bayes (NB) algorithm, Local Outlier Factor (LOF) algorithm to develop the predictive models. This paper studies the application of data mining techniques to develop 4G customer predictive models and compares three models on our dataset through precision, recall, and cumulative recall curve. The result is that precision of ABM, NB and LOF are 0.6016, 0.6735 and 0.3844. From the aspects of cumulative recall curve NB algorithm also is the best one.
机译:电信数据库的大小和数量正在快速增长,但大多数数据都没有分析用于揭示隐藏和有价值的知识分子。 从数据挖掘技术开发的模型对于电信来进行正确预测是有用的。 DataSet包含来自电信公司的100万客户。 我们实施数据挖掘技术,即adaboostm1(abm)算法,天真贝叶斯(Nb)算法,本地异常因素因子(LOF)算法来开发预测模型。 本文研究了数据挖掘技术的应用,通过精密,召回和累积召回曲线对我们的数据集进行三种模型进行了比较。 结果是ABM,NB和LOF的精确度为0.6016,0.6735和0.3844。 从累积召回曲线NB算法的各个方面也是最好的。

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