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An overview of some classical Growing Neural Networks and new developments

机译:某些经典的成长型神经网络和新发展的概述

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The mapping capability of artificial neural networks (ANN) is dependent on their structure, i.e., the number of layers and the number of hidden units. There is no formal way of computing network topology as a function of the complexity of a problem. It is usually selected by trial-and-error and can be rather time consuming. Basically, we make use of two mechanisms that may modify the topology of the network: growth and pruning. This paper gives an overview of some classical Growing Neural Networks (GNN) and their new developments. This kind of GNN is also called the ANN with incremental learning. Firstly, some classical GNN with supervised learning are outlined which includes tiling algorithm, tower algorithm, upstart algorithm, cascade-correlation algorithm, restricted coulomb energy network and resource-allocation network. Secondly, a class of classical GNN with unsupervised learning is reviewed, such as self-organizing surfaces, evolve self-organizing maps, incremental grid growing and growing hierarchical self-organizing map. Thirdly, the new developments of GNN, including both supervised learning and unsupervised learning, are surveyed. The conclusion is given at the end of the paper.
机译:人工神经网络(ANN)的映射能力取决于其结构,即层数和隐藏单元数。没有根据问题的复杂程度来计算网络拓扑的正式方法。通常通过反复试验来选择它,并且可能会非常耗时。基本上,我们利用可能会修改网络拓扑的两种机制:增长和修剪。本文概述了一些经典的成长型神经网络(GNN)及其最新发展。这种GNN也称为具有增量学习的ANN。首先,概述了一些经典的带有监督学习的GNN,包括平铺算法,塔算法,新贵算法,级联相关算法,受限库仑能量网络和资源分配网络。其次,回顾了一类具有无监督学习的经典GNN,例如自组织曲面,演化自组织图,增量网格增长和增长式自组织图。第三,考察了GNN的新发展,包括监督学习和无监督学习。结论在本文末尾给出。

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