首页> 外文会议>International work-conference on the interplay between natural and artificial computation;IWINAC 2009 >ANLAGIS: Adaptive Neuron-Like Network Based on Learning Automata Theory and Granular Inference Systems with Applications to Pattern Recognition and Machine Learning
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ANLAGIS: Adaptive Neuron-Like Network Based on Learning Automata Theory and Granular Inference Systems with Applications to Pattern Recognition and Machine Learning

机译:ANLAGIS:基于学习自动机理论和颗粒推理系统的自适应神经元样网络,在模式识别和机器学习中的应用

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In this paper the fusion of artificial neural networks, granular computing and learning automata theory is proposed and we present as a final result ANLAGIS, an adaptive neuron-like network based on learning automata and granular inference systems. ANLAGIS can be applied to both pattern recognition and learning control problems. Another interesting contribution of this paper is the distinction between pre-synaptic and post-synaptic learning in artificial neural networks. To illustrate the capabilities of ANLAGIS some experiments on knowledge discovery in data mining and machine learning are presented. Previous work of Jang et al. [1] on adaptive network-based fuzzy inference systems, or simply ANFIS, can be considered a precursor of ANLAGIS. The main, novel contribution of ANLAGIS is the incorporation of Learning Automata Theory within its structure.
机译:本文提出了人工神经网络,颗粒计算和学习自动机理论的融合,并提出了基于学习自动机和颗粒推理系统的自适应神经元样网络ANLAGIS作为最终结果。 ANLAGIS可以应用于模式识别和学习控制问题。本文的另一个有趣的贡献是人工神经网络中突触前学习和突触后学习之间的区别。为了说明ANLAGIS的功能,提出了一些有关数据挖掘和机器学习中的知识发现的实验。 Jang等人的先前工作。 [1]基于自适应网络的模糊推理系统,或简称为ANFIS,可以被认为是ANLAGIS的前身。 ANLAGIS的主要创新贡献是将学习​​自动机理论整合到其结构中。

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