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An extreme value injection approach with reduced learning time to make MLNs multiple-weight-fault tolerant

机译:具有减少的学习时间的极值注射方法,使MLNS多重容错

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We propose an efficient method for making multilayered neural networks(MLN) fault-tolerant to all multiple weight faults in an interval by injecting intention ally two extreme values in the interval in a learning phase. The degree of fault-tolerance to a multiple weight fault is measured by the number of essential multiple links. First, we analytically discuss how to choose effectively the multiple links to be injected, and present a learning algorithm for making MLNs fault tolerant to all multiple (i.e., simultaneous) faults in the interval defined by two multi-dimensional extreme points. Then it is shown that after the learning algorithm successfully finishes, MLNs become fault tolerant to all multiple faults in the interval. The time in a weight modification cycle is almost linear for the fault multiplicity. The simulation results show that the computing time drastically reduces comparing with [1] as the multiplicity increases.
机译:我们提出了一种有效的方法,用于通过在学习阶段中的间隔内注射意图盟友盟友的两个极值来使多层神经网络(MLN)容错地对所有多重故障进行容错。通过基本多个链路的数量来测量对多重重量故障的容错程度。首先,我们分析了如何有效地选择要注入的多个链路,并呈现用于在由两个多维极端点定义的间隔中定义的所有多个(即,同时)故障的MLNS容错的学习算法。然后表明,在学习算法成功完成后,MLNS在间隔中变为对所有多个故障的容错。重量修改周期中的时间几乎是用于故障多样性的线性。仿真结果表明,随着多个增加的增加,计算时间随着与[1]的比较而变化。

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