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Predicting the Success of Ensemble Algorithms in the Banking Sector

机译:预测银行业合奏算法的成功

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摘要

The banking sector, like other service sector, improves in accordance with the customer's needs. Therefore, to know the needs of customers and to predict customer behaviors are very important for competition in the banking sector. Data mining uncoversrelationships and hidden patterns in large data sets. Classification algorithms, one of the applications of data mining, is used very effectively in decision making. In this study, the c4.5 algorithm, a decision trees algorithm widely used in classification problems, is used in an integrated way with the ensemble machine learning methods in order to increase the efficiency of the algorithms. Data obtained via direct marketing campaigns from Portugal Banks was used to classify whether customers have term deposit accounts or not. Artificial Neural Networks and Support Vector Machines as Traditional Artificial Intelligence Methods and Bagging-C4.5 and Boosted-C.45 as ensemble-decision tree hybrid methods were used in classification. Bagging-C4.5 as ensemble-decision tree algorithm achieved more powerful classification success than other used algorithms. The ensemble-decision tree hybrid methods give better results than artificial neural networks and support vector machines as traditional artificial intelligence methods for this study.
机译:与其他服务部门一样,银行业根据客户的需求有所改善。因此,要了解客户的需求并预测客户行为对于银行业竞争非常重要。数据挖掘发现大型数据集中的发现和隐藏模式。分类算法是数据挖掘的应用之一,非常有效地用于决策。在这项研究中,C4.5算法是一种在分类问题中广泛使用的决策树算法,以集成机器学习方法的整合方式使用,以提高算法的效率。通过葡萄牙银行的直接营销活动获得的数据用于对客户是否具有定期存款帐户进行分类。人工神经网络和支持矢量机作为传统人工智能方法以及Bagging-C4.5和Boosted-C.45作为合奏剥夺树混合方法,用于分类。 Bagging-C4.5作为集合决策树算法比其他使用的算法获得了更强大的分类成功。合奏决策树混合方法比人工神经网络和支持向量机作为本研究的传统人工智能方法,给出了更好的结果。

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