Pattern recognition properties of neural networks

J. Makhoul
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引用次数: 51

Abstract

Artificial neural networks have been applied largely to solving pattern recognition problems. The authors point out that a firm understanding of the statistical properties of neural nets is important for using them in an effective manner for pattern recognition problems. The author gives an overview of pattern recognition properties for feedforward neural nets, with emphasis on two topics: partitioning of the input space into classes and the estimation of posterior probabilities for each of the classes.<>
神经网络的模式识别特性
人工神经网络已广泛应用于解决模式识别问题。作者指出,对神经网络的统计特性的深刻理解对于有效地将其用于模式识别问题至关重要。作者概述了前馈神经网络的模式识别特性,重点介绍了两个主题:将输入空间划分为类和估计每个类的后验概率。
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