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Generalization performance of ARTMAP-based networks in structural risk minimization framework

机译:基于ArtMap的结构风险最小化框架的泛化性能

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Many techniques have been proposed for improving the generalization performance of Fuzzy ARTMAP. We present a study of these architectures in the framework of structural risk minimization and computational learning theory. Fuzzy ARTMAP training uses on-line learning, has proven convergence results, and has relatively few parameters to deal with. Empirical risk minimization is employed by Fuzzy ARTMAP during its training phase. One weakness of Fuzzy ARTMAP concerns over-training on noisy training data sets or naturally overlapping training classes of data. Most of these proposed techniques attempt to address this issue, in different ways, either directly or indirectly. In this paper we will present a summary of how some of these architectures achieve success as learning algorithms.
机译:已经提出了许多技术来改善模糊艺术图的泛化性能。我们在结构风险最小化框架和计算学习理论中展示了这些架构的研究。模糊艺术图培训使用在线学习,已经证明了融合结果,并且参数相对较少处理。模糊艺术在培训阶段采用经验风险最小化。模糊艺术图的一个弱点涉及对嘈杂的训练数据集或自然重叠的训练类数据进行过度培训。这些提出的大部分技术都试图以直接或间接的方式以不同方式解决这个问题。在本文中,我们将概述其中一些架构如何成功作为学习算法。

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