深度信念网络用于连续数据的聚类和分类

M. Salama, A. Hassanien, A. Fahmy
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引用次数: 32

摘要

深度信念网络(Deep Belief Network, DBN)是由一堆受限玻尔兹曼机(Restricted Boltzmann Machines, RBM)组成的深度体系结构。深度架构的好处是,每一层都比前一层学习更复杂的特征。DBN和RBM可以作为一种特征提取方法,也可以作为初始学习权值的神经网络。该方法在连续输入数据的聚类和分类中依赖于DBN,而不使用DBN架构中的反向传播。由于DBN的连接权值是初始化的,而不是仅仅使用随机权值,因此DBN应该比传统神经网络具有更好的性能。DBN (RBM)的每一层都依赖于对比发散法进行输入重构,提高了网络的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Belief Network for clustering and classification of a continuous data
Deep Belief Network (DBN) is a deep architecture that consists of a stack of Restricted Boltzmann Machines (RBM). The deep architecture has the benefit that each layer learns more complex features than layers before it. DBN and RBM could be used as a feature extraction method also used as neural network with initially learned weights. The approach proposed depends on DBN in clustering and classification of continuous input data without using back propagation in the DBN architecture. DBN should have a better a performance than the traditional neural network due the initialization of the connecting weights rather than just using random weights in NN. Each layer in DBN (RBM) depends on Contrastive Divergence method for input reconstruction which increases the performance of the network.
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