A Modified Artificial Neural Network Learning Algorithm for Imbalanced Data Set Problem

Asrul Adam, M. I. Shapiai, Z. Ibrahim, M. Khalid, L. C. Chew, W. Lee, J. Watada
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引用次数: 14

Abstract

A modified learning algorithm of Artificial Neural Networks (ANN) is introduced in this paper to solve imbalanced data set problems. In solving imbalanced data set, it is critical to predict the minority class due to their imbalanced nature. In order to improve the standard ANN classifier prediction performance, this paper focuses on optimizing the decision boundary of the step function at the output layer of ANN using particle swarm optimization (PSO). A feedforward ANN is chosen in this study. Firstly, a conventional back propagation algorithm is employed to train the ANN. PSO is then applied to train the real predicted output of training data from this trained network. As the result, the optimum value of decision boundary is found and applied to the classifier. Prediction performance is assessed by G-mean, which is a measure to indicate the efficiency of classifiers for imbalanced data sets. Based on experimental results, the proposed model is able to solve imbalanced data sets problem with better performance compared to the standard ANN.
不平衡数据集问题的改进人工神经网络学习算法
本文提出了一种改进的人工神经网络学习算法来解决数据集不平衡问题。由于少数类的不平衡性,在求解非平衡数据集时,对其进行预测是至关重要的。为了提高标准人工神经网络分类器的预测性能,本文采用粒子群算法(PSO)对人工神经网络输出层阶跃函数的决策边界进行优化。本研究选择前馈人工神经网络。首先,采用传统的反向传播算法对人工神经网络进行训练。然后将粒子群算法应用于训练网络中训练数据的真实预测输出。结果发现决策边界的最优值并应用到分类器中。预测性能通过g均值来评估,这是一个衡量分类器对不平衡数据集效率的指标。实验结果表明,与标准人工神经网络相比,该模型能够较好地解决数据集不平衡问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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