Online pattern classification with multiple neural network systems: an experimental study

C. Lim, R. Harrison
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引用次数: 41

Abstract

In this paper, an empirical study of the development and application of a committee of neural networks on online pattern classification tasks is presented. A multiple classifier framework is designed by adopting an Adaptive Resonance Theory-based (ART) autonomously learning neural network as the building block. A number of algorithms for combining outputs from multiple neural classifiers are considered, and two benchmark data sets have been used to evaluate the applicability of the proposed system. Different learning strategies coupling offline and online learning approaches, as well as different input pattern representation schemes, including the "ensemble" and "modular" methods, have been examined experimentally. Benefits and shortcomings of each approach are systematically analyzed and discussed. The results are comparable, and in some cases superior, with those from other classification algorithms. The experiments demonstrate the potentials of the proposed multiple neural network systems in offering an alternative to handle online pattern classification tasks in possibly nonstationary environments.
多神经网络在线模式分类的实验研究
本文对一组神经网络在在线模式分类任务中的开发和应用进行了实证研究。采用基于自适应共振理论(ART)的自主学习神经网络作为构件,设计了一个多分类器框架。考虑了多种用于组合多个神经分类器输出的算法,并使用两个基准数据集来评估所提出系统的适用性。实验研究了不同的学习策略耦合离线和在线学习方法,以及不同的输入模式表示方案,包括“集成”和“模块化”方法。系统地分析和讨论了每种方法的优点和缺点。结果与其他分类算法的结果相当,在某些情况下甚至更好。实验证明了所提出的多神经网络系统在处理非平稳环境下的在线模式分类任务方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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