A multi-net local learning framework for pattern recognition

Jian-xiong Dong, A. Krzyżak, C. Suen
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引用次数: 13

Abstract

This paper proposes a general local learning framework to effectively alleviate the complexities of classifier design by means of "divide and conquer" principle and ensemble method. The learning framework consists of quantization layer and ensemble layer. After GLVQ and MLP are applied to the framework, the proposed method is tested on MNIST handwritten digit database. The obtained performance is very promising, an error rate with 0.99%, which is comparable to that of LeNet5, one of the best classifiers on this database. Further, in contrast to LeNet5, our method is especially suitable for a large-scale real-world classification problem.
模式识别的多网络局部学习框架
本文提出了一种通用的局部学习框架,通过“分而治之”原则和集成方法有效地缓解了分类器设计的复杂性。学习框架由量化层和集成层组成。将GLVQ和MLP应用于该框架后,在MNIST手写体数字数据库上进行了测试。获得的性能非常有希望,错误率为0.99%,与该数据库中最好的分类器之一LeNet5相当。此外,与LeNet5相比,我们的方法特别适合于大规模的现实世界分类问题。
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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