On Comparative Analogy between Ant Colony Systems and Neural Networks Considering Behavioral Learning Performance

H. Mustafa, A. Al-Hamadi
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引用次数: 10

Abstract

This article addresses an interesting comparative analytical study. The presented study considers two concepts of diverse algorithmic biological behavioral learning approach. Those concepts for computational intelligence are tightly related to neural and non-neural Systems. Respectively, the first algorithmic intelligent approach concerned with observed obtained practical results after three neural animal systems’ activities. Namely, they are Pavlov’s, and Thorndike’s experimental work. Furthermore, a mouse’s trials during its movement inside figure of eight (8) maze, those aiming to reach optimal solution for reconstruction problem. However, second algorithmic intelligent approach conversely originated from observed activities’ results for non-neural Ant Colony System (ACS). Those results have been obtained after reaching optimal solution solving Traveling Sales-man Problem (TSP). Interestingly, the effect of increasing number of agents (either neurons or ants) on learning performance shown to be similar for both introduced neural and non-neural systems. Considering observed two systems' performances, it has shown both to be in agreement with learning convergence process searching for Least Mean Square (LMS) error algorithm. Accordingly, adopted ANN modeling is realistically relevant tool systematic observations' investigation and performance analysis for both selected computational intelligence (biological behavioral learning) systems.
考虑行为学习性能的蚁群系统与神经网络的比较类比
这篇文章讨论了一个有趣的比较分析研究。本研究考虑了不同算法生物行为学习方法的两个概念。计算智能的这些概念与神经系统和非神经系统密切相关。第一种涉及观察的算法智能方法分别在三种神经动物系统活动后获得了实际结果。也就是说,它们是巴甫洛夫和桑代克的实验作品。此外,小鼠在8字形迷宫中运动过程中的试验,旨在达到重建问题的最优解。然而,第二种算法智能方法相反地起源于非神经蚁群系统(ACS)的观察活动结果。这些结果是在求解旅行推销员问题(TSP)的最优解后得到的。有趣的是,对于引入的神经系统和非神经系统,增加代理(神经元或蚂蚁)数量对学习性能的影响是相似的。结合观察到的两个系统的性能,表明两者都符合搜索最小均方误差算法的学习收敛过程。因此,所采用的人工神经网络建模是对所选计算智能(生物行为学习)系统进行系统观察调查和性能分析的现实相关工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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