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首页> 外文期刊>Neural computing & applications >Multi-objective symbolic regression using long-term artificial neural network memory (LTANN-MEM) and neural symbolization algorithm (NSA)
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Multi-objective symbolic regression using long-term artificial neural network memory (LTANN-MEM) and neural symbolization algorithm (NSA)

机译:使用长期人工神经网络存储器(LTANN-MEM)和神经象征化算法的多目标符号回归(NSA)

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摘要

Symbolic regression is commonly performed using evolutionary algorithms like genetic programming (GP). The goal of this research work is to construct symbolic models from examples where a new symbolic regression approach based on artificial neural networks is proposed. This approach is composed of a long-term artificial neural network memory (LTANN-MEM), a working memory (WM) in addition to a proposed neural symbolization algorithm (NSA) which uses LTANN-MEM and WM for synthesizing symbolic models equivalent to learning examples. The proposed LTANN-MEM is composed of two separate multilayer perceptron (MLP) feed-forward neural networks as well as the working memory which is composed of a single MLP. The core idea of the proposed approach is based on memorizing the learning experience of individual perceptrons in long-term memory (LTM), so they become available to be reused in generating and developing hypotheses about the learning examples. Although this idea is generic and could be used for the purpose of symbolization in general, it is applied here in symbolic regression for Boolean domain only. The obtained results show the ability of the proposed approach to search the solutions space using learning experience stored previously in LTM to guide the search process. A comparison is done with GP and found that the proposed NSA algorithm outperforms GP in its performance when increasing the number of inputs and outputs in the same problem by comparing the number of emerged candidate solutions in both approaches.
机译:符号回归通常使用遗传编程(GP)等进化算法进行。本研究工作的目标是从提出基于人工神经网络的新符号回归方法的示例构成符号模型。除了建议的神经象征算法(NSA)之外,该方法包括长期人工神经网络存储器(LTANN-MEM),除了建议的神经象征算法(NSA)使用LTANN-MEM和WM来合成等于学习的符号模型例子。所提出的LTANN-MEM由两个单独的多层的Herceptron(MLP)前馈神经网络以及由单个MLP组成的工作存储器组成。所提出的方法的核心思想是基于在长期记忆(LTM)中记住单个感知者的学习经验,因此它们可用于在生成和开发关于学习示例的假设时重复使用。虽然这个想法是通用的,但可以用于象征化的目的,它仅在这里应用于Boolean域的象征性回归。所获得的结果表明所提出的方法使用先前在LTM中存储的学习经验来搜索解决方案空间来指导搜索过程的能力。使用GP进行比较,发现所提出的NSA算法在通过比较两种方法中出现的候选解决方案的数量来增加同一问题的输入和输出的数量时,其性能优于其性能。

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