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A self-organizing neural tree for large-set pattern classification

机译:用于大型模式分类的自组织神经树

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For the case of classifying large-set and complex patterns, the greater part of conventional neural networks suffer from several difficulties such as the determination of the structure and size of the network, the computational complexity, etc. To cope with these difficulties, we propose a structurally adaptive intelligent neural tree (SAINT). The basic idea is to partition hierarchically the input pattern space using a tree-structured network which is composed of subnetworks with topology-preserving mapping ability. The main advantage of SAINT is that it attempts to find automatically a network structure and size suitable for the classification of large-set and complex patterns through structure adaptation. Experimental results reveal that SAINT is very effective for the classification of large-set real world handwritten characters with high variations, as well as multilingual, multifont, and multisize large-set characters.
机译:对于大集合和复杂模式进行分类的情况,传统神经网络的大部分都存在一些困难,例如确定网络的结构和大小,计算复杂性等。为了解决这些困难,我们提出了结构自适应的智能神经树(SAINT)。基本思想是使用树结构网络对输入模式空间进行分层划分,该树结构网络由具有拓扑保留映射功能的子网组成。 SAINT的主要优点在于,它尝试通过结构自适应自动查找适合于对大集合和复杂模式进行分类的网络结构和大小。实验结果表明,SAINT对于具有高变化性的大型现实世界手写字符以及多语言,多字体和多尺寸大型字符的分类非常有效。

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