Bio-inspired Training Algorithms for Artificial Hydrocarbon Networks: A Comparative Study

Hiram Ponce
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引用次数: 3

Abstract

Artificial hydrocarbon networks (AHN) is a supervised learning algorithm inspired on chemical organic compounds. Its first implementation occupied the well-known least squares estimates (LSE) as part of the training algorithm. Unsurprisingly, AHN cannot converge to suitable solutions when dealing with high dimensional data, falling into the curse of dimensionality. In that sense, this paper proposes two hybrid training algorithms for AHN using bio-inspired algorithms, i.e. Simulated annealing and particle swarm optimization, and compares them against the LSE-based method. Experimental results show that these bio-inspired algorithms improve the performance of artificial hydrocarbon networks, concluding that these hybrid algorithms can be used as alternative learning algorithms for high dimensional data.
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人工碳氢化合物网络的仿生训练算法:比较研究
人工碳氢化合物网络(Artificial hydrocarbon networks, AHN)是一种受有机化合物启发的监督学习算法。它的第一个实现将众所周知的最小二乘估计(LSE)作为训练算法的一部分。不出所料,在处理高维数据时,AHN无法收敛到合适的解,陷入了维度的诅咒。为此,本文提出了两种基于仿生算法的AHN混合训练算法,即模拟退火和粒子群优化,并与基于lse的方法进行了比较。实验结果表明,这些仿生算法提高了人工碳氢化合物网络的性能,表明这些混合算法可以作为高维数据的替代学习算法。
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