一种基于非迭代神经网络学习理论的最佳鲁棒、快速学习模式识别器

C. J. Hu
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引用次数: 2

摘要

解析地证明了,当一层硬限制感知器的输入输出映射满足一个正的线性独立性(PLI)条件时,从一个包含N/spl次/M个输入矩阵U的代数矩阵方程中,一步非迭代地得到满足该映射的连接矩阵a。U的每一列是一个给定的标准模式向量,有M个标准模式待分类。分析证明了在该非迭代学习系统中,对U中所有非奇异子矩阵U/sup k/进行排序可以作为一个自动特征提取过程。本文报道了基于这种新颖的非迭代学习理论的超快速学习、最优鲁棒性神经网络模式识别系统的理论、设计和实验。一个未经编辑的视频短片展示了这种新的模式识别系统的学习速度和识别的鲁棒性。讨论了与其他神经网络模式识别和特征提取系统的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimally robust, fast-learning, pattern recognizer derived from a noniterative neural network learning theory
It is proved analytically that, whenever the input-output mapping of a one-layered, hard-limited perceptron satisfies a positive, linear independency (PLI) condition, the connection matrix A to meet this mapping can be obtained noniteratively in one step from an algebraic matrix equation containing an N/spl times/M input matrix U. Each column of U is a given standard pattern vector, and there are M standard patterns to be classified. It is also analytically proved that sorting out all nonsingular submatrices U/sup k/ in U can be used as an automatic feature extraction process in this noniterative-learning system. This paper reports the theory, the design, and the experiments of a superfast-learning, optimally-robust, neural network pattern recognition system derived from this novel noniterative learning theory. An unedited video movie showing the speed of learning and the robustness in recognition of this novel pattern recognition system is demonstrated. Comparison to other neural network pattern recognition and feature extraction systems are discussed.
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