全连接神经网络向部分连接神经网络的一种可能转换

J. Levendovszky
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引用次数: 1

摘要

在超大规模集成电路实现的情况下,实现具有大量互连的神经网络(NN)遇到了很大的困难。因此,用包含大量节点的神经网络解决任务涉及到一个尖锐的实现问题。因此,最小化互连数是神经网络研究的一个基本问题。考虑了细胞方法,通过使用部分连接的网络来解决问题,其中每个神经元与一定数量的相邻神经元“通信”,或者至少采用非细胞方法来减少连接的数量,而不考虑相邻的配置。描述了最小化的两个概念。目前还没有一种通用的方法将原问题转化为等价的问题,使其可以在一定的不变性准则下由元胞网络或部分连通网络求解,并保证与原网络得到的解相同。本文从最小化互连数的意义上提供了一种实现这种优化的方法和精确的步骤。然而,相对于节点数量而言,所需的计算量增长得非常快,这阻碍了对大复杂性问题的实际应用
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A possible transformation of the fully connected neural nets into partially connected networks
Realizing a neural network (NN) with a large number of interconnections meets severe difficulties in the case of VLSI implementation. Therefore, solving tasks by NN containing a lot of nodes involves an acute realization problem. Thus, the minimization of the number of interconnections is a fundamental problem of NN research. The cellular approach, to solve problems by using partially connected networks in which each neuron 'communicates' with a certain number of neighbouring ones, or at least a noncellular method to reduce the number of interconnections regardless of the neighbouring configuration, is considered. Both concepts of minimization are depicted. There is no general method to transform the original problem to an equivalent one which can be solved by a cellular or partially connected network under some invariancy criteria guaranteeing the same solution as it was achieved by the original net. This paper provides a method and an exact procedure for accomplishing this optimization in the sense of minimizing the number of interconnections. However, the number of computations needed grows extremely fast with respect to the number of nodes, which prevents practical application to problems with large complexity.<>
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