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TurboBrain: A Neural Network with Direct Learnign Based on Linear or Non-Linear Threshold Logics

机译:涡轮脑:基于线性或非线性阈值逻辑的直接学习的神经网络

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This paper deals with a significant extension of the neural Threshold Logic pioneered by McCulloch and Pitts. The output of their formal neuron is given by the Heaviside function with an argument depending on a linear weighted sum of the inputs and a threshold parameter. All Boolean Tables cannot be represented by such a formal neuron. For example the exclusive OR and the Parity Problem need hidden neurons to be resolved. A few years ago, Dubois proposed a non-linear fractal neuron to resolve the exclusive OR problem with only one single neuron. Then Dubois and Resconi introduce the Non-linear Threshold Logic, that is to say a Heaviside Function with a non-linear sum of the inputs which can represent any Boolean Tables with only one neuron where the Dubois' non-linear neuron model is a Heaviside Fixed Function. In this framework the Supervised Learning is Direct, that is to say without recursive algorithms for computing the weights and threshold, related to the new foundation of the Threshold Logic by Resconi and Raymondi. This paper will review the main aspects of the linear and non-linear threshold logic with direct learning and applications in pattrn recognition with the software TurboBrain. This constitutes a new tool in the framework of neural CAST, Computer Aided Systems Theory and Technology, proposed by F.Pichler.
机译:本文涉及McCulloch和Pitts开创的神经阈值逻辑的重要延伸。其正式神经元的输出由沉重的功能给出,具体取决于输入的线性加权和和阈值参数。所有布尔表都不能由这样的正式神经元表示。例如,异或奇偶校验问题需要解决隐藏的神经元。几年前,Dubois提出了一种非线性分形神经元,只能用一个单一神经元解析独特或问题。然后Dubois和Resconi介绍了非线性阈值逻辑,也就是说,具有输入的非线性和输入的沉重功能,该输入可以代表任何具有一个神经元的布尔表,其中Dubois的非线性神经元模型是沉重的固定功能。在这个框架中,监督学习是直接的,也就是说没有递归算法来计算权重和阈值,与Resconi和Raymondi的阈值逻辑的新基础相关。本文将审查具有直接学习和应用于Pattrn识别的线性和非线性阈值逻辑的主要方面,并使用软件涡轮机识别。这构成了F.Pichler提出的神经铸造,计算机辅助系统理论和技术框架中的一种新工具。

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