Classification with Pseudo Neural Networks Based on Evolutionary Symbolic Regression

Z. Oplatková, R. Šenkeřík
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引用次数: 2

Abstract

This research deals with a novel approach to classification. Classical artificial neural networks, where a relation between inputs and outputs is based on the mathematical transfer functions and optimized numerical weights, was an inspiration for this work. Artificial neural networks need to optimize weights, but the structure and transfer functions are usually set up before the training. There exist some evolutionary approaches, which help to set up the structure or to optimize weights in different ways than standard artificial neural networks do. The proposed method utilizes the symbolic regression for synthesis of a whole structure, i.e. the relation between inputs and output(s). For experimentation, Differential Evolution (DE) and Self Organizing Migrating Algorithm (SOMA) for the main procedure of analytic programming (AP) and DE as an algorithm for meta-evolution were used.
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基于进化符号回归的伪神经网络分类
本研究涉及一种新的分类方法。经典的人工神经网络,其中输入和输出之间的关系是基于数学传递函数和优化的数值权重,是这项工作的灵感。人工神经网络需要优化权值,但通常在训练前就已经建立了结构和传递函数。与标准人工神经网络相比,存在一些进化方法,以不同的方式帮助建立结构或优化权重。所提出的方法利用符号回归来综合整个结构,即输入和输出之间的关系。实验采用差分进化(DE)和自组织迁移算法(SOMA)作为分析规划(AP)的主要程序,并采用差分进化(DE)作为元进化算法。
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