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A Comparative Study using Feature Selection to Predict the Behaviour of Bank Customers

机译:使用特征选择来预测银行客户行为的比较研究

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Though banks hold an abundance of data on their customers in general, it is not unusual for them to track the actions of the creditors regularly to improve the services they offer to them and understand why a lot of them choose to exit and shift to other banks. Analyzing customer behavior can be highly beneficial to the banks as they can reach out to their customers on a personal level and develop a business model that will improve the pricing structure, communication, advertising, and benefits for their customers and themselves. Features like the amount a customer credits every month, his salary per annum, the gender of the customer, etc. are used to classify them using machine learning algorithms like K Neighbors Classifier and Random Forest Classifier. On classifying the customers, banks can get an idea of who will be continuing with them and who will be leaving them in the near future. Our study determines to remove the features that are independent but are not influential to determine the status of the customers in the future without the loss of accuracy and to improve the model to see if this will also increase the accuracy of the results.
机译:虽然银行一般持有对客户的丰富数据,但他们定期跟踪债权人的行为并不罕见,以改善他们向他们提供的服务,了解为什么他们为什么选择退出和转移到其他银行。分析客户行为可能对银行提供极大的有益,因为他们可以在个人层面上与客户联系,并开发一个能够提高客户和客户的定价结构,通信,广告和利益的商业模式。每个月的客户信用金额,他的工资每年,客户的性别等都用来使用像K邻居分类器和随机林分类器等机器学习算法对它们进行分类。在对客户进行分类时,银行可以了解谁将继续与他们继续,谁将在不久的将来离开。我们的研究决定删除独立的功能,但不影响未来客户的状态,而不会损失准确性,并改进模型,以了解这也会提高结果的准确性。

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