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Classification method and apparatus based on boosting and pruning of multiple classifiers

机译:基于多个分类器的增强和修剪的分类方法和装置

摘要

A boosting and pruning system and method for utilizing a plurality of neural networks, preferably those based on adaptive resonance theory (ART), in order to increase pattern classification accuracy is presented. The method utilizes a plurality of N randomly ordered copies of the input data, which is passed to a plurality of sets of booster networks. Each of the plurality of N randomly ordered copies of the input data is divided into a plurality of portions, preferably with an equal allocation of the data corresponding to each class for which recognition is desired. The plurality of portions is used to train the set of booster networks. The rules generated by the set of booster networks are then pruned in an intra-booster pruning step, which uses a pair-wise Fuzzy AND operation to determine rule overlap and to eliminate rules which are sufficiently similar. This process results in a set of intra-booster pruned booster networks. A similar pruning process is applied in an inter-booster pruning process, which eliminates rules from the intra-booster pruned networks with sufficient overlap. The final, derivative booster network captures the essence of the plurality of sets of booster networks and provides for higher classification accuracy than available using a single network.
机译:提出了一种利用多个神经网络(优选地基于自适应共振理论(ART)的神经网络)以增强模式分类精度的增强和修剪系统及方法。该方法利用输入数据的N个随机排序的副本,该副本被传递到多组增强网络。输入数据的N个随机排序副本中的每个副本均分为多个部分,最好是与希望识别的每个类别相对应的数据平均分配。多个部分用于训练升压网络组。然后,在booster内修剪步骤中修剪由一组增强网络生成的规则,该步骤使用成对的Fuzzy AND运算确定规则重叠并消除足够相似的规则。此过程会产生一组内部增强修剪的增强网络。增压器间修剪过程中应用了类似的修剪过程,该过程从增压器内修剪网络中消除了具有足够重叠的规则。最终的派生增强网络捕获了多组增强网络的本质,并提供了比使用单个网络更高的分类精度。

著录项

  • 公开/公告号US6456991B1

    专利类型

  • 公开/公告日2002-09-24

    原文格式PDF

  • 申请/专利权人 HRL LABORATORIES LLC;

    申请/专利号US19990388858

  • 发明设计人 NARAYAN SRINIVASA;YURI OWECHKO;

    申请日1999-09-01

  • 分类号G06N30/20;

  • 国家 US

  • 入库时间 2022-08-22 00:47:58

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