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A data-driven approach to predict the success of bank telemarketing

机译:一种数据驱动的方法来预测银行电话营销的成功

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We propose a data mining (DM) approach to predict the success of telemarketing calls for selling bank long-term deposits. A Portuguese retail bank was addressed, with data collected from 2008 to 2013, thus including the effects of the recent financial crisis. We analyzed a large set of 150 features related with bank client, product and social-economic attributes. A semi-automatic feature selection was explored in the modeling phase, performed with the data prior to July 2012 and that allowed to select a reduced set of 22 features. We also compared four DM models: logistic regression, decision trees (DTs), neural network (NN) and support vector machine. Using two metrics, area of the receiver operating characteristic curve (AUC) and area of the LIFT cumulative curve (ALIFT). the four models were tested on an evaluation set, using the most recent data (after July 2012) and a rolling window scheme. The NN presented the best results (AUC = 0.8 and ALIFT = 0.7), allowing to reach 79% of the subscribers by selecting the half better classified clients. Also, two knowledge extraction methods, a sensitivity analysis and a DT, were applied to the NN model and revealed several key attributes (e.g., Euribor rate, direction of the call and bank agent experience). Such knowledge extraction confirmed the obtained model as credible and valuable for telemarketing campaign managers.
机译:我们提出了一种数据挖掘(DM)方法来预测电话销售对出售银行长期存款的成功。讨论了一家葡萄牙零售银行,收集了2008年至2013年的数据,其中包括近期金融危机的影响。我们分析了150种与银行客户,产品和社会经济属性相关的功能。在建模阶段探索了一种半自动特征选择,并使用2012年7月之前的数据进行了选择,从而可以选择减少的22个特征集。我们还比较了四种DM模型:逻辑回归,决策树(DT),神经网络(NN)和支持向量机。使用两个度量,接收器工作特性曲线的面积(AUC)和LIFT累积曲线的面积(ALIFT)。使用最新数据(2012年7月之后)和滚动窗口方案,在评估集上测试了这四个模型。 NN呈现最佳结果(AUC = 0.8和ALIFT = 0.7),通过选择分类效果更好的一半客户,可以达到79%的订户。此外,将两种知识提取方法(敏感性分析和DT)应用于NN模型,并揭示了几个关键属性(例如Euribor利率,呼叫方向和银行代理经验)。这样的知识提取证实了所获得的模型对于电话推销活动经理是可信且有价值的。

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