类不平衡多类医疗诊断问题中人工神经网络的多目标演化

A. Shenfield, Shahin Rostami
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引用次数: 15

摘要

本文提出了一种新的多目标optimisatìon方法来解决在人工神经网络中寻找良好的结构和参数选择的问题,以及在严重偏斜的数据集上训练分类器的问题。使用最先进的CMA-PAES-HAGA多目标进化算法[41],不仅针对总体分类精度,而且针对每个单独目标类的分类精度,同时优化人工神经网络总体的结构、权重和偏差。这种方法的有效性随后在现实世界的医学诊断中的多类问题(胎儿心脑血管的分类)上得到了证明,其中超过75%的数据属于多数类,其余的属于另外两个少数类。优化后的人工神经网络在少数类识别方面的表现明显优于标准前馈人工神经网络,但在整体分类精度方面的表现略差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-objective evolution of artificial neural networks in multi-class medical diagnosis problems with class imbalance
This paper proposes a novel multi-objective optimisatìon approach to solving both the problem of finding good structural and parametric choices in an ANN and the problem of training a classifier with a heavily skewed data set. The state-of-the-art CMA-PAES-HAGA multi-objective evolutionary algorithm [41] is used to simultaneously optimise the structure, weights, and biases of a population of ANNs with respect to not only the overall classification accuracy, but the classification accuracies of each individual target class. The effectiveness of this approach is then demonstrated on a real-world multi-class problem in medical diagnosis (classification of fetal cardiotocogorams) where more than 75% of the data belongs to the majority class and the rest to two other minority classes. The optimised ANN is shown to significantiy outperform a standard feed-forward ANN with respect to minority class recognition at the cost of slightiy worse performance in terms of overall classification accuracy.
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