Modular Neural Network Task Decomposition Via Entropic Clustering

Jorge M. Santos, Luís A. Alexandre, J. M. D. Sá
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引用次数: 24

Abstract

The use of monolithic neural networks (such as a multilayer perceptron) has some drawbacks: e.g. slow learning, weight coupling, the black box effect. These can be alleviated by the use of a modular neural network. The creation of a MNN has three steps: task decomposition, module creation and decision integration. In this paper we propose the use of an entropic clustering algorithm as a way of performing task decomposition. We present experiments on several real world classification problems that show the performance of this approach
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基于熵聚类的模块化神经网络任务分解
使用单片神经网络(如多层感知器)有一些缺点:例如缓慢的学习,权耦合,黑盒效应。这些可以通过使用模块化神经网络来缓解。MNN的创建有三个步骤:任务分解、模块创建和决策集成。在本文中,我们提出使用熵聚类算法作为执行任务分解的一种方式。我们在几个真实世界的分类问题上进行了实验,证明了这种方法的性能
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