Data Level Approach for Multiclass Imbalance Financial Data

N. Ruzgar, Clare Chua
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引用次数: 1

Abstract

In the real world, the class imbalance problem is a common issue in which classifier gives more importance to the majority class whereas less importance to the minority class. In class imbalance, imbalance metrics would not be suitable to evaluate the performance of classifiers with error rate or predictive accuracy. One type of imbalance data -handling method is resampling. In this paper, three resampling methods, oversampling, under-sampling and hybrid, methods are used with different approaches for in class imbalance of two different financial data to see the impact of class imbalance ratios on performance measures of nine different classification algorithms. Aiming to achieve better change classification performance, the performance of the classification algorithms, Bayes Net, Navie Bayes, J48, Random Forest Meta-Attribute Selected Classifier, MetaClassification via Regression, Meta-Logitboost, Logistic Regression, and Decision Tree, are measured on two Canadian Banks multiclass imbalance data with the performance measures, Precision, Recall, ROC Area and Kappa Statistic, by using WEKA software. The outcome of these performance measurements compared with three different resampling methods. The results provide us with a clear picture on the overall impact of class imbalance on the classification dataset and they indicate that proposed resampling methods can also be used for in class imbalance problems
多类失衡财务数据的数据层次方法
在现实世界中,类不平衡问题是分类器对多数类重视程度高而对少数类重视程度低的常见问题。在类不平衡的情况下,不平衡指标不适合用来评价具有错误率或预测准确率的分类器的性能。一种不平衡数据处理方法是重采样。本文采用过采样、欠采样和混合三种重采样方法,采用不同的方法对两种不同的金融数据进行类内失衡,观察类失衡比例对九种不同分类算法性能指标的影响。为了获得更好的变化分类性能,利用WEKA软件,对贝叶斯网络、纳维贝叶斯、J48、随机森林元属性选择分类器、meta - classification via Regression、Meta-Logitboost、Logistic回归和决策树等分类算法在两家加拿大银行多类失衡数据上的性能指标Precision、Recall、ROC Area和Kappa Statistic进行了测量。这些性能测量的结果与三种不同的重采样方法进行了比较。结果为我们提供了类不平衡对分类数据集的总体影响的清晰图像,并表明所提出的重采样方法也可用于类不平衡问题
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