Vazquez Roberto A, Garro Beatriz A
Intelligent Systems Group, Faculty of Engineering, La Salle University, Benjamín Franklin 47, Colonia Condesa, 06140 Mexico City, DF, Mexico.
Instituto en Investigaciones en Matemáticas Aplicadas y en Sistemas, Universidad Nacional Autónoma de México, Ciudad Universitaria, 04510 Mexico City, DF, Mexico.
Comput Intell Neurosci. 2015;2015:947098. doi: 10.1155/2015/947098. Epub 2015 Feb 1.
Spiking neurons are models designed to simulate, in a realistic manner, the behavior of biological neurons. Recently, it has been proven that this type of neurons can be applied to solve pattern recognition problems with great efficiency. However, the lack of learning strategies for training these models do not allow to use them in several pattern recognition problems. On the other hand, several bioinspired algorithms have been proposed in the last years for solving a broad range of optimization problems, including those related to the field of artificial neural networks (ANNs). Artificial bee colony (ABC) is a novel algorithm based on the behavior of bees in the task of exploring their environment to find a food source. In this paper, we describe how the ABC algorithm can be used as a learning strategy to train a spiking neuron aiming to solve pattern recognition problems. Finally, the proposed approach is tested on several pattern recognition problems. It is important to remark that to realize the powerfulness of this type of model only one neuron will be used. In addition, we analyze how the performance of these models is improved using this kind of learning strategy.
脉冲神经元模型旨在以逼真的方式模拟生物神经元的行为。最近,已经证明这种类型的神经元可以高效地应用于解决模式识别问题。然而,缺乏用于训练这些模型的学习策略使得它们无法应用于多个模式识别问题。另一方面,近年来已经提出了几种受生物启发的算法来解决广泛的优化问题,包括与人工神经网络(ANN)领域相关的问题。人工蜂群(ABC)算法是一种基于蜜蜂在探索环境以寻找食物源任务中的行为的新型算法。在本文中,我们描述了如何将ABC算法用作学习策略来训练脉冲神经元以解决模式识别问题。最后,在所提出的方法在几个模式识别问题上进行了测试。需要注意的是,为了体现这种类型模型的强大功能,我们仅使用一个神经元。此外,我们分析了使用这种学习策略如何提高这些模型的性能。