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Literal and ProRulext: algorithms for rule extraction of ANNs

机译:文字和prorulext:ANNS规则提取的算法

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Artificial neural networks (ANN) present excellent capacity for generalization. Besides, they are applied to the most diverse human knowledge domains. However, since they represent knowledge in its topology, weight values and bias, explaining clearly how an ANN has obtained its outputs is not a trivial task for human experts. Usually such deficiency can be minimized through the "if/then" rule extraction from the trained network. Thus, this work presents two algorithms for the propositional rule extraction from trained ANNs: literal and ProRulext. Among other advantages, these methods can be applied to trained networks for pattern classification and time series forecast, obtaining rules that are compact, comprehensible and faithful to the networks from which they have been extracted, also at a lower computational cost compared to NeuroLinear.
机译:人工神经网络(ANN)具有优异的泛化能力。此外,它们适用于最多样化的人类知识域。然而,由于它们代表了其拓扑,重量值和偏见的知识,因此清楚地解释了ANN已获得其产出的差异,这不是人类专家的琐碎任务。通常,通过从训练网络的“if /然后”规则提取可以最小化这种缺陷。因此,这项工作提出了来自培训的ANN的命题规则提取的两个算法:文字和prorulext。在其他优点之外,这些方法可以应用于培训的网络用于模式分类和时间序列预测,获得紧凑,可理解和忠于从中提取它们的网络的规则,同样以较低的计算成本与神经溶解性相比。

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