Artificial NeuroGlial Networks

A. Pazos, A. A. González, Félix Montañés Pazos
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引用次数: 6

Abstract

More than 50 years ago connectionist systems (CSs) were created with the purpose to process information in the computers like the human brain (McCulloch & Pitts, 1943). Since that time these systems have advanced considerably and nowadays they allow us to resolve complex problems in many disciplines (classification, clustering, regression, etc.). But this advance is not enough. There are still a lot of limitations when these systems are used (Dorado, 1999). Mostly the improvements were obtained following two different ways. Many researchers have preferred the construction of artificial neural networks (ANNs) based in mathematic models with diverse equations which lead its functioning (Cortes & Vapnik, 1995; Haykin, 1999). Otherwise other researchers have pretended the most possibly to make alike these systems to human brain (Rabuñal, 1999; Porto, 2004). The systems included in this article have emerged following the second way of investigation. CSs which pretend to imitate the neuroglial nets of the brain are introduced. These systems are named Artificial NeuroGlial Networks (ANGNs) (Porto, 2004). These CSs are not only made of neuron, but also from elements which imitate glial neurons named astrocytes (Araque, 1999). These systems, which have hybrid training, have demonstrated efficacy when resolving classification problems with totally connected feed-forward multilayer networks, without backpropagation and lateral connections. BACKGROUND
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人工神经胶质网络
50多年前,连接主义系统(CSs)被创造出来,目的是像人脑一样在计算机中处理信息(McCulloch & Pitts, 1943)。从那时起,这些系统取得了长足的进步,如今它们使我们能够解决许多学科(分类、聚类、回归等)中的复杂问题。但这一进展还不够。当使用这些系统时,仍然有很多限制(Dorado, 1999)。大多数改进是通过两种不同的方式获得的。许多研究人员倾向于基于具有多种方程的数学模型构建人工神经网络(ANNs),这些方程导致其功能(Cortes & Vapnik, 1995;微积分,1999)。除此之外,其他研究人员已经尽最大可能制造出与人类大脑相似的系统(Rabuñal, 1999;波尔图,2004)。本文所包括的系统是在第二种调查方式之后出现的。介绍了假装模仿大脑神经胶质网络的CSs。这些系统被命名为人工神经胶质网络(ANGNs)(波尔图,2004)。这些CSs不仅由神经元组成,而且还由模仿神经胶质神经元的星形胶质细胞组成(Araque, 1999)。这些具有混合训练的系统在解决完全连接的前馈多层网络的分类问题时已经证明了有效性,没有反向传播和横向连接。背景
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