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A Cluster-Based Data Balancing Ensemble Classifier for Response Modeling in Bank Direct Marketing

机译:银行直接营销中基于集群的数据平衡集成分类器用于响应建模

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摘要

The aim of direct marketing is to find the right customers who are most likely to respond to marketing campaign messages. In order to detect which customers are most valuable, response modeling is used to classify customers as respondent or non-respondent using their purchase history information or other behavioral characteristics. Data mining techniques, including effective classification methods, can be used to predict responsive customers. However, the inherent problem of imbalanced data in response modeling brings some difficulties into response prediction. As a result, the prediction models will be biased towards non-respondent customers. Another problem is that single models cannot provide the desired high accuracy due to their internal limitations. In this paper, we propose an ensemble classification method which removes imbalance in the data, using a combination of clustering and under-sampling. The predictions of multiple classifiers are combined in order to achieve better results. Using data from a bank's marketing campaigns, this ensemble method is implemented on different classification techniques and the results are evaluated. We also evaluate the performance of this ensemble method against two alternative ensembles. The experimental results demonstrate that our proposed method can improve the performance of the response models for bank direct marketing by raising prediction accuracy and increasing response rate.
机译:直销的目的是找到最有可能响应营销活动信息的合适客户。为了检测哪些客户最有价值,使用响应模型使用他们的购买历史信息或其他行为特征将客户分类为响应者还是非响应者。数据挖掘技术(包括有效的分类方法)可用于预测响应型客户。然而,响应建模中数据不平衡的内在问题给响应预测带来了一些困难。结果,预测模型将偏向无响应的客户。另一个问题是,单个模型由于其内部限制而无法提供所需的高精度。在本文中,我们提出了一种综合分类方法,该方法使用聚类和欠采样的组合来消除数据中的不平衡。组合多个分类器的预测,以获得更好的结果。使用来自银行营销活动的数据,可以使用不同的分类技术来实现这种集成方法,并对结果进行评估。我们还针对两种替代性合奏评估了该合奏方法的性能。实验结果表明,本文提出的方法可以通过提高预测准确性和提高响应率来提高银行直接营销响应模型的性能。

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