An Enhanced Bank Customers Churn Prediction Model Using A Hybrid Genetic Algorithm And K-Means Filter And Artificial Neural Network

R. Yahaya, O. A. Abisoye, S. Bashir
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引用次数: 7

Abstract

Customer churn prediction is an important issue in banking industry and has gained attention over the years. Early identification of customers likely to leave a bank is vital in order to retain such customers. Predicting churning is a data mining tasks that require several data mining approaches. Churn prediction based on Artificial Neural Networks (ANNs) have been successful, however, they are affected by the noise or outliers present in such datasets. The effect of such noise, and number of training samples on churn prediction was investigated. Two filters were applied to the data, the Genetic Algorithm (GA) and K-means filter. The filtered data were used to train an ANN model and tested with a 30% unfiltered data. The performance show that the training performance improved when noise was filtered while the testing performance was affected by the unbalanced data caused by filtering.
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基于遗传算法、k均值滤波和人工神经网络的银行客户流失预测模型
客户流失预测是银行业的一个重要问题,多年来一直受到关注。为了留住这些客户,及早发现可能离开银行的客户是至关重要的。搅动预测是一项数据挖掘任务,需要多种数据挖掘方法。基于人工神经网络(ann)的流失预测已经取得了成功,然而,它们受到这些数据集中存在的噪声或异常值的影响。研究了这些噪声和训练样本数量对客户流失预测的影响。对数据采用遗传算法(GA)和K-means滤波两种滤波方法。过滤后的数据用于训练人工神经网络模型,并使用30%未过滤的数据进行测试。实验结果表明,滤波后的训练性能得到改善,而滤波后的数据不平衡会影响测试性能。
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