Customer Analysis Using Machine Learning Algorithms: A Case Study Using Banking Consumer Dataset

R. Siva Subramanian, D. Prabha, B. Maheswari, J. Aswini
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引用次数: 1

Abstract

The aim of each enterprise is to achieve high revenue from the business and to stay in a high position from their competitors. To archive high revenue and high position from competitors the need of understanding the business consumers is a crucial one. However the firm business is completely dependent on the consumers the efficient analysis of consumers within the enterprises makes to achieve the business to high position. To perform effective consumer analysis, in this study different machine learning is studied and experimented. ML classifiers make to understand in-depth analysis about the consumer data and further enables to plan wise decision strategies to enhance the business revenue and consumer satisfaction intelligently. The use of different ML classifiers is to sort out how the customer prediction outcome changes accordingly to the ML classifier is applied. This makes to find the best ML classifier for the consumer dataset applied in this study. The experimental procedure is performed using different ML classifiers and the outcome achieved is captured and projected using various validity scores. This work applies different ML classifiers like K-NN, C4.5, Random Forest, Random Tree, LR, MLP and NB for customer analysis. The empirical results illustrate the C4.5 model achieves better accuracy prediction compare to other ML classifiers and also compared with the time complexity NB model works efficiently with running time.
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使用机器学习算法的客户分析:使用银行消费者数据集的案例研究
每个企业的目标都是从业务中获得高收入,并在竞争对手中保持较高的地位。为了从竞争对手那里获得高收入和高地位,了解业务消费者的需求是至关重要的。然而,企业的经营完全依赖于消费者,对企业内部消费者的有效分析使得企业达到了较高的地位。为了进行有效的消费者分析,本研究对不同的机器学习进行了研究和实验。机器学习分类器可以对消费者数据进行深入的分析,并进一步制定明智的决策策略,从而智能地提高业务收入和消费者满意度。使用不同的ML分类器是为了整理客户预测结果如何随ML分类器的应用而变化。这使得为本研究中应用的消费者数据集找到最好的ML分类器。使用不同的ML分类器执行实验过程,并使用各种有效性分数捕获和预测所获得的结果。这项工作应用了不同的机器学习分类器,如K-NN、C4.5、随机森林、随机树、LR、MLP和NB进行客户分析。实验结果表明,与其他ML分类器相比,C4.5模型具有更好的准确率预测效果,并且与时间复杂度相比,NB模型在运行时间上具有更高的效率。
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