Predicting the success of bank telemarketing using deep convolutional neural network

Kee-Hoon Kim, Chang-Seok Lee, Sang-Muk Jo, Sung-Bae Cho
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引用次数: 23

Abstract

Recently, exploitations of the financial big data to solve the real world problems have been to the fore. Deep neural networks are one of the famous machine learning classifiers as their automatic feature extractions are useful, and even more, their performance is impressive in practical problems. Deep convolutional neural network, one of the promising deep neural networks, can handle the local relationship between their nodes which can make this model powerful in the area of image and speech recognition. In this paper, we propose the deep convolutional neural network architecture that predicts whether a given customer is proper for bank telemarketing or not. The number of layers, learning rate, initial value of nodes, and other parameters that should be set to construct deep convolutional neural network are analyzed and proposed. To validate the proposed model, we use the bank marketing data of 45,211 phone calls collected during 30 months, and attain 76.70% of accuracy which outperforms other conventional classifiers.
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利用深度卷积神经网络预测银行电话营销的成功
近年来,利用金融大数据解决现实问题已经崭露头角。深度神经网络是著名的机器学习分类器之一,因为它的自动特征提取非常有用,而且在实际问题中表现令人印象深刻。深度卷积神经网络是一种很有前途的深度神经网络,它可以处理节点之间的局部关系,这使得该模型在图像和语音识别领域具有强大的应用前景。在本文中,我们提出了一种深度卷积神经网络架构来预测给定客户是否适合银行电话营销。分析并提出了构建深度卷积神经网络需要设置的层数、学习率、节点初值等参数。为了验证所提出的模型,我们使用了30个月内收集的45,211个电话的银行营销数据,并获得了76.70%的准确率,优于其他传统分类器。
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