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Meta-cognitive Neural Network for classification problems in a sequential learning framework

机译:在顺序学习框架中用于分类问题的元认知神经网络

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摘要

In this paper, we propose a sequential learning algorithm for a neural network classifier based on human meta-cognitive learning principles. The network, referred to as Meta-cognitive Neural Network (McNN). McNN has two components, namely the cognitive component and the meta-cognitive component. A radial basis function network is the fundamental building block of the cognitive component. The meta-cognitive component controls the learning process in the cognitive component by deciding what-to-leam, when-to-learn and how-to-learn. When a sample is presented at the cognitive component of McNN, the meta-cognitive component chooses the best learning strategy for the sample using estimated class label, maximum hinge error, confidence of classifier and class-wise significance. Also sample overlapping conditions are considered in growth strategy for proper initialization of new hidden neurons. The performance of McNN classifier is evaluated using a set of benchmark classification problems from the UC1 machine learning repository and two practical problems, viz., the acoustic emission for signal classification and a mammogram data set for cancer classification. The statistical comparison clearly indicates the superior performance of McNN over reported results in the literature.
机译:在本文中,我们提出了一种基于人类元认知学习原理的神经网络分类器顺序学习算法。该网络称为元认知神经网络(McNN)。 McNN具有两个组件,即认知组件和元认知组件。径向基函数网络是认知组件的基本构建块。元认知组件通过决定学习什么,何时学习和如何学习来控制认知组件中的学习过程。当在McNN的认知组件中展示样本时,元认知组件会使用估计的类别标签,最大铰链误差,分类器的置信度和类别重要性为样本选择最佳学习策略。在生长策略中还考虑了样品重叠条件,以正确初始化新的隐藏神经元。 McNN分类器的性能是使用UC1机器学习存储库中的一组基准分类问题和两个实际问题(即,用于信号分类的声发射和用于癌症分类的乳房X线照片数据集)评估的。统计比较清楚地表明,McNN的性能优于文献报道的结果。

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