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Feature Selection for Financial Data Classification: Islamic Finance Application

机译:金融数据分类的特征选择:伊斯兰金融应用

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The rapid growth of computing technology to process vast amount of data has impelled more interest in data mining. Such interest was mainly aimed at knowledge discovery to improve decision making process in diverse range of applications, including Islamic finance. One of the most critical steps in data mining is data preprocessing, as it would directly affect the quality of insights obtained at the later stage. Feature selection has been widely used in data preprocessing phase to improve the machine-learning algorithm and model interpretability. However, there has been limited attention has been given on the evaluation of feature selection methods on its effectiveness to process input data for Induction Decision Tree (IDT). Hence, this study aims to address such gap in the literature through the use of real-world data in Islamic finance to evaluate the improvement that generated by feature selection method. The result of the study shows that the use of such technique has resulted in better performance of the IDT model generated in the study.
机译:用于处理大量数据的计算技术的迅速发展引起了人们对数据挖掘的更多兴趣。这种兴趣主要针对知识发现,以改善包括伊斯兰金融在内的各种应用的决策过程。数据预处理是数据挖掘中最关键的步骤之一,因为它会直接影响在后期获得的见解的质量。特征选择已广泛用于数据预处理阶段,以改善机器学习算法和模型可解释性。但是,对于特征选择方法对处理归纳决策树(IDT)的输入数据的有效性的评估一直很少。因此,本研究旨在通过使用伊斯兰金融中的真实世界数据来评估文献中的此类差距,以评估特征选择方法所产生的改进。研究结果表明,这种技术的使用使研究中生成的IDT模型具有更好的性能。

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