An enhanced Neural Network Ensemble for automatic sleep scoring

A. AlSukker, A. Al-Ani
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Abstract

Improving the diversity of Neural Network Ensembles (NNE) plays an important role in creating robust classification systems in many fields. Several methods have been proposed in the literature to create such diversity using different sets of classifiers or using different portions of training/feature sets. Neural networks are often used as base classifiers in multiple classifier systems as they adapt easily to small changes in the training data, therefore creating diversity that is necessary to make the ensemble work. This paper presents a novel algorithm based on generating a set of classifiers such that each one of them is biased towards one of the target classes. This will improve the ensemble diversity and hence its performance. Results on sleep data sets show that the proposed method is able to outperform the traditional fusion algorithms of bagging and boosting.
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用于自动睡眠评分的增强神经网络集成
在许多领域,提高神经网络集成(NNE)的多样性对于创建鲁棒分类系统起着重要的作用。文献中已经提出了几种方法来使用不同的分类器集或使用训练/特征集的不同部分来创建这种多样性。神经网络通常被用作多个分类器系统中的基本分类器,因为它们很容易适应训练数据的微小变化,因此产生多样性,这是使集成工作所必需的。本文提出了一种基于生成一组分类器的新算法,其中每个分类器都偏向于一个目标类。这将提高集合的多样性,从而提高其性能。在睡眠数据集上的实验结果表明,该方法优于传统的bagging和boosting融合算法。
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