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Multi-class pattern classification using neural networks

机译:使用神经网络的多类模式分类

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摘要

Multi-class pattern classification has many applications including text document classification, speech recognition, object recognition, etc. Multi-class pattern classification using neural networks is not a trivial extension from two-class neural networks. This paper presents a comprehensive and competitive study in multi-class neural learning with focuses on issues including neural network architecture, encoding schemes, training methodology and training time complexity. Our study includes multi-class pattern classification using either a system of multiple neural networks or a single neural network, and modeling pattern classes using one-against-all, one-against-one, one-against-higher-order, and P-against-Q. We also discuss implementations of these approaches and analyze training time complexity associated with each approach. We evaluate six different neural network system architectures for multi-class pattern classification along the dimensions of imbalanced data, large number of pattern classes, large vs. small training data through experiments conducted on well-known benchmark data. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:多类模式分类具有许多应用,包括文本文档分类,语音识别,对象识别等。使用神经网络的多类模式分类并不是两类神经网络的重要扩展。本文针对多类神经学习提出了一项全面而具有竞争力的研究,重点是神经网络架构,编码方案,训练方法和训练时间复杂度等问题。我们的研究包括使用多个神经网络或单个神经网络的系统进行多类模式分类,以及使用对所有,一对一,对高一阶和P-对模型类别进行建模反对Q。我们还将讨论这些方法的实现,并分析与每种方法相关的训练时间复杂度。通过对知名基准数据进行的实验,我们沿着不平衡数据,大量模式类别,大型训练数据与小型训练数据的维度,对六种不同的神经网络系统体系结构进行了多类模式分类评估。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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