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Cognitive learning in neural networks using fuzzy systems

机译:使用模糊系统在神经网络中的认知学习

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Adaptation and recognition problem in multipurpose environments is always called as one of the most important and useful problems between the recognition algorithms and mechanisms. One popular approach is using mechanisms which are trying to train the recognition system on a targeted pattern, to concentrating all the capacity of recognition system onto recognition or prediction process. Cognitive structures are among these intelligence learning solutions. Since cognitive structures used in living organisms have shown their eligibility on recognition and classification with appropriate accuracy, utilizing of these structures is rational. This paper proposes three cognitive principles based on neural network as a universal approximator. First a central control unit, a fuzzy system, will be shown to determine the adaptation rate for a target sample. Second, a minimal optimization will be performing for each sample. Third, a recognition system is going to use for recognition in sort of different environments.
机译:多用途环境中的适应和识别问题始终被称为识别算法和机制之间最重要和最有用的问题之一。一种流行的方法是使用试图在目标模式上训练识别系统的机制,将所有识别系统的所有容量集中在识别或预测过程中。认知结构是这些智能学习解决方案。由于生物体中使用的认知结构以适当的准确性显示出对识别和分类的资格,因此利用这些结构是合理的。本文提出了基于神经网络作为通用近似器的三个认知原则。首先,将显示一个中央控制单元,模糊系统,以确定目标样本的适应率。其次,每个样本都将对最小的优化进行。第三,识别系统将用于识别不同的环境。

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