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Ensembles of ARTMAP-based neural networks: An experimental study

机译:基于ARTMAP的神经网络集成:一项实验研究

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摘要

ARTMAP-based models are neural networks which use a match-based learning procedure. The main advantage of ARTMAP-based models over error-based models, such as Multi-Layer Perceptron, is the learning time, which is considered as significantly fast. This feature is extremely important in complex systems that require the use of several models, such as ensembles or committees, since they produce robust and fast classifiers. Subsequently, some extensions of the ARTMAP model have been proposed, such as: ARTMAP-IC, RePART, among others. Aiming to add an extra contribution to ARTMAP context, this paper presents an analysis of ARTMAP-based models in ensemble systems. As a result of this analysis, two main goals are aimed, which are: to analyze the influence of the RePART model in ensemble systems and to detect any relation between diversity and accuracy in ensemble systems in order to use this relation in the design of these systems.
机译:基于ARTMAP的模型是使用基于匹配的学习过程的神经网络。与基于错误的模型(例如多层感知器)相比,基于ARTMAP的模型的主要优势在于学习时间,这被认为是非常快的。在需要使用多种模型(例如合奏或委员会)的复杂系统中,此功能极其重要,因为它们会生成可靠且快速的分类器。随后,提出了ARTMAP模型的一些扩展,例如:ARTMAP-IC,RePART等。为了给ARTMAP上下文增加额外的贡献,本文对集成系统中基于ARTMAP的模型进行了分析。分析的结果是,有两个主要目标:分析RePART模型在集成系统中的影响,并检测集成系统多样性和准确性之间的任何关系,以便在设计这些关系时使用这种关系系统。

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