识别长期存款客户:一种机器学习方法

Mohammad Abu Tareq Rony, M. Hassan, Eshtiak Ahmed, Asif Karim, S. Azam, D. S. A. A. Reza
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引用次数: 2

摘要

银行部门的大部分收入通常来自客户的长期存款。银行要了解客户的特点,才能增加产品的销售。为此,采用营销策略来瞄准潜在客户,并让他们直接与银行互动,从而产生大量关于客户特征和人口统计数据。近年来,人们发现可以使用各种数据分析,特征选择和机器学习技术来分析客户特征以及可以显著影响客户决策的变量。这些方法可以用来识别不同类别的消费者,以预测客户是否会订阅长期存款,从而使营销策略更加成功。在这项研究中,我们采用了R编程方法来分析金融交易数据,以深入了解如何使用数据挖掘技术改进业务流程,以发现有趣的趋势并做出更多数据驱动的决策。我们在给定的数据集中使用了探索性数据分析(EDA)、主成分分析(PCA)、因子分析和相关性等统计分析。此外,本研究的目标是使用Logistic回归、随机森林、支持向量机和k近邻中至少三种典型的分类算法,然后围绕注册长期存款的客户建立预测模型。其中,我们从逻辑回归中获得了最好的准确性,为90.64%,灵敏度为99.05%。使用这些算法的准确性、敏感性和特异性评分对结果进行分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Long-Term Deposit Customers: A Machine Learning Approach
Majority of the revenue from the banking sector is usually generated from long term deposits by customers. It is for banks to understand customer characteristics to increase product sales. To aid this, marketing strategies are employed to target potential customers and let them interact with the banks directly, generating a large amount of data on customer characteristics and demographics. In recent years, it has been discovered that various data analysis, feature selection and machine learning techniques can be employed to analyze customer characteristics as well as variables that can impact customer decision significantly. These methods can be used to identify consumers in different categories to predict whether a customer would subscribe to a long-term deposit, allowing the marketing strategy to be more successful. In this study, we have taken a R programming approach to analyze financial transaction data to gain insight into how business processes can be improved using data mining techniques to find interesting trends and make more data-driven decisions. We have used statistical analysis like Exploratory Data Analysis (EDA), Principal Component Analysis (PCA), Factor Analysis and Correlations in the given data set. Besides, the study's goal is to use at least three typical classification algorithms among Logistic Regression, Random Forest, Support Vector Machine and K-nearest neighbors, and then make predictive models around customers signing up for long term deposits. Where we have gotten best accuracy from Logistic Regression which is 90.64 % as well the sensitivity is 99.05 %. Results were analyzed using the accuracy, sensitivity, and specificity score of these algorithms.
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