Arithmetic codes for concurrent error detection in artificial neural networks: the case of AN+B codes

V. Piuri, M. Sami, R. Stefanelli
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引用次数: 18

Abstract

A number of digital implementations of neural networks have been presented in recent literature. Moreover, several authors have dealt with the problem of fault tolerance; whether such aim is achieved by techniques typical of the neural computation (e.g. by repeated learning) or by architecture-specific solutions, the first basic step consists clearly in diagnosing the faulty elements. The present paper suggests adoption of concurrent error detection; the granularity chosen to identify faults is that of the neuron. An approach based on a class of arithmetic codes is suggested; various different solutions are discussed, and their relative performances and costs are evaluated. To check the validity of the approach, its application is examined with reference to multi-layered feed-forward networks.<>
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人工神经网络并发错误检测的算术码:以AN+B码为例
在最近的文献中提出了许多神经网络的数字实现。此外,一些作者已经处理了容错问题;无论这样的目标是通过典型的神经计算技术(例如通过重复学习)还是通过特定架构的解决方案来实现,第一个基本步骤显然包括诊断故障元素。本文建议采用并发错误检测;选择用于识别故障的粒度是神经元的粒度。提出了一种基于一类算术编码的方法;讨论了各种不同的解决方案,并对其相对性能和成本进行了评估。为了验证该方法的有效性,以多层前馈网络为例对其应用进行了检验
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