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Rule Inference Network for Classification

机译:分类规则推理网络

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摘要

To alleviate the low interpretability of algorithms in neural networks, we propose a rule inference network based on rule-based system using the evidential reasoning approach (RIMER), which is interpretable by the rules in belief rule base (BRB). Considering the influence of data distribution on attribute weights, we optimize attribute weights based on the Sigmoid activation function to ensure that the normalization process adapts the overall data distribution. A rule inference network for classification is constructed including the framework and the learning algorithm. A comparison with the other algorithms demonstrates that the proposed rule inference network for classification has advantages in interpretability and learning capability.
机译:为了缓解神经网络中算法的低解释性,我们提出了一种基于证据推理方法(RIMER)的基于规则的系统的规则推理网络,该规则推理网络可以由信念规则库(BRB)中的规则进行解释。考虑到数据分布对属性权重的影响,我们基于Sigmoid激活函数优化属性权重,以确保规范化过程适应整个数据分布。构建了包括框架和学习算法的分类规则推理网络。与其他算法的比较表明,所提出的用于分类的规则推理网络在可解释性和学习能力方面具有优势。

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