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On-line pattern analysis by evolving self-organizing maps

机译:通过发展自组织图进行在线模式分析

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Many real world data processing tasks demand intelligent computational models with good efficiency and adaptability in their on-line operations. Consequently, neural algorithms with constructive network structure and incremental learning ability are of increasing interest. In this paper we present an algorithm of evolving self-organizing map (ESOM), which features an evolving network structure and fast on-line learning. Experiments have been carried out on some benchmark data sets for vector quantisation and classification tasks. Compared with other methods, ESOM achieved better or comparable performance with a much shorter learning process. Our results show that ESOM is a promising computational model for on-line pattern analysis in real world problems.
机译:许多现实世界中的数据处理任务都需要在联机操作中具有良好效率和适应性的智能计算模型。因此,具有建设性的网络结构和增量学习能力的神经算法越来越受到关注。在本文中,我们提出了一种进化的自组织映射算法(ESOM),该算法具有不断发展的网络结构和快速的在线学习功能。已经针对矢量量化和分类任务在一些基准数据集上进行了实验。与其他方法相比,ESOM在较短的学习过程中获得了更好或相当的性能。我们的结果表明,ESOM是用于现实世界中在线模式分析的有前途的计算模型。

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