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An empirical analysis of attribute skewness over class imbalance on Probabilistic Neural Network and Na??ve Bayes classifier

机译:基于概率神经网络和朴素贝叶斯分类器的类不平衡属性偏度的实证分析

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摘要

Many real world data are subject to skewness or imbalance. Often class distribution is imbalanced, while several attribute or feature skewness is also frequent. Skewness affects the classification of the dataset samples. While class skewness biases the classification towards majority classes, skewed features may also bias the classification as they are significant for few classes. The purpose of this paper is to find out the impact of skewed feature variation in the training dataset for the Naïve Bayesian Classifier(NBC) and Probabilistic Neural Network(PNN) while classifying imbalanced data. The experiment was carried out on six KEEL dataset which are skewed in terms of class distribution having different imbalance ratio. This work looked for skewed features in those dataset and analysed the classification performance with and without the skewed features. The result illustrates that NBC is better in the mentioned circumstance compared to PNN.
机译:许多现实世界的数据可能会偏斜或不平衡。通常,类分布不平衡,同时也经常出现多个属性或特征偏斜。偏斜度会影响数据集样本的分类。虽然类别偏斜将分类偏向多数类别,但偏斜要素也可能偏向分类,因为它们对于少数类别而言很重要。本文的目的是在对不平衡数据进行分类时,找出偏态特征变化对朴素贝叶斯分类器(NBC)和概率神经网络(PNN)的训练数据集的影响。实验是在六个KEEL数据集上进行的,这些数据集因具有不同失衡比的类分布而偏斜。这项工作在那些数据集中寻找偏斜特征,并分析了有或没有偏斜特征时的分类性能。结果表明,与PNN相比,在上述情况下NBC更好。

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