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A comparative study of hybrid machine learning techniques for customer lifetime value prediction

机译:混合机器学习技术用于客户生命周期价值预测的比较研究

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Purpose - Customer lifetime value (CLV) has received increasing attention in database marketing. Enterprises can retain valuable customers by the correct prediction of valuable customers. In the literature, many data mining and machine learning techniques have been applied to develop CLV models. Specifically, hybrid techniques have shown their superiorities over single techniques. However, it is unknown which hybrid model can perform the best in customer value prediction. Therefore, the purpose of this paper is to compares two types of commonly-used hybrid models by classification t classification and clustering t classification hybrid approaches, respectively, in terms of customer value prediction. Design/methodology/approach - To construct a hybrid model, multiple techniques are usually combined in a two-stage manner, in which the first stage is based on either clustering or classification techniques, which can be used to pre-process the data. Then, the output of the first stage (i.e. the processed data) is used to construct the second stage classifier as the prediction model. Specifically, decision trees, logistic regression, and neural networks are used as the classification techniques and k-means and self-organizing maps for the clustering techniques to construct six different hybrid models. Findings - The experimental results over a real case dataset show that the classification t classification hybrid approach performs the best. In particular, combining two-stage of decision trees provides the highest rate of accuracy (99.73 percent) and lowest rate of Type I/II errors (0.22 percent/0.43 percent). Originality/value - The contribution of this paper is to demonstrate that hybrid machine learning techniques perform better than single ones. In addition, this paper allows us to find out which hybrid technique performs best in terms of CLV prediction.
机译:目的-客户生命周期价值(CLV)在数据库营销中越来越受到关注。企业可以通过正确预测有价值的客户来保留有价值的客户。在文献中,许多数据挖掘和机器学习技术已用于开发CLV模型。具体而言,混合技术已显示出其优于单一技术的优势。但是,尚不清楚哪种混合模型可以在客户价值预测中表现最佳。因此,本文的目的是在客户价值预测方面分别通过分类t分类和聚类t分类混合方法比较两种常用的混合模型。设计/方法/方法-要构建混合模型,通常以两阶段的方式组合多种技术,其中第一阶段基于聚类或分类技术,可用于预处理数据。然后,第一阶段的输出(即处理后的数据)用于构建第二阶段分类器作为预测模型。具体来说,决策树,逻辑回归和神经网络被用作分类技术,而k均值和自组织图则被用作聚类技术以构建六个不同的混合模型。研究结果-在实际案例数据集上的实验结果表明,分类t分类混合方法表现最佳。特别是,结合两阶段的决策树可提供最高的准确率(99.73%)和最低的I / II型错误率(0.22%/ 0.43%)。原创性/价值-本文的贡献在于证明混合机器学习技术的性能要优于单一机器学习技术。另外,本文使我们能够找出哪种混合技术在CLV预测方面表现最佳。

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