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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Self-generating prototypes for pattern classification
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Self-generating prototypes for pattern classification

机译:用于模式分类的自生成原型

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摘要

Prototype classifiers are a type of pattern classifiers, whereby a number of prototypes are designed for each class so as they act as representatives of the patterns of the class. Prototype classifiers are considered among the simplest and best performers in classification problems. However, they need careful positioning of prototypes to capture the distribution of each class region and/or to define the class boundaries. Standard methods, such as learning vector quantization (LVQ), are sensitive to the initial choice of the number and the locations of the prototypes and the learning rate. In this article, a new prototype classification method is proposed, namely self-generating prototypes (SGP). The main advantage of this method is that both the number of prototypes and their locations are learned from the training set without much human intervention. The proposed method is compared with other prototype classifiers such as LVQ, self-generating neural tree (SGNT) and K-nearest neighbor (K-NN) as well as Gaussian mixture model (GMM) classifiers. In our experiments, SGP achieved the best performance in many measures of performance, such as training speed, and test or classification speed. Concerning number of prototypes, and test classification accuracy, it was considerably better than the other methods, but about equal on average to the GMM classifiers. We also implemented the SGP method on the well-known STATLOG benchmark, and it beat all other 21 methods (prototype methods and non-prototype methods) in classification accuracy. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:原型分类器是模式分类器的一种,由此为每个类设计了许多原型,以便它们充当类的模式的代表。原型分类器被认为是分类问题中最简单,性能最好的分类器。但是,他们需要仔细定位原型,以捕获每个类区域的分布和/或定义类边界。诸如学习矢量量化(LVQ)之类的标准方法对原型数量和位置以及学习率的初始选择很敏感。本文提出了一种新的原型分类方法,即自生成原型(SGP)。这种方法的主要优点是原型的数量及其位置都是从训练集中学习的,无需太多的人工干预。将该方法与其他原型分类器(例如LVQ,自生成神经树(SGNT)和K最近邻(K-NN)以及高斯混合模型(GMM)分类器进行了比较。在我们的实验中,SGP在许多性能指标(例如训练速度,测试或分类速度)中均达到了最佳性能。关于原型数量和测试分类准确性,它比其他方法要好得多,但平均而言与GMM分类器相等。我们还在著名的STATLOG基准上实施了SGP方法,在分类准确度方面击败了其他所有21种方法(原型方法和非原型方法)。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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