Converting Neural Networks to Rule Foam

A. K. Panda, B. Kosko
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引用次数: 5

Abstract

A system of rules can approximate a trained neural classifier after sampling from that classifier. The rules define a generalized probability mixture that then describes the classifier. The size or granularity of the rule if-parts defines a foam-like structure with a few large rule if-part set bubbles in patternclass centers and many smaller if-part sets near class borders. The rule foam's mixture gives a Bayesian posterior over the rules. The posterior describes the relative importance of each rule for each observed input and output. The foam's mixture also gives the conditional variance that measures the uncertainty in its output. So the rule base is statistically interpretable as well as modular and adaptive. A rule foam with 1000 Gaussian rules approximated a 96.85% accurate MNIST neural classifier and had itself 95.66% classification accuracy. Foams can also approximate other foams. Some approximator foams out-performed the target foam that generated their training data. The rule foam's granularity mitigates the rule explosion inherent in the rule-based approximator's graph-covering structure
将神经网络转换为规则泡沫
规则系统可以在对训练好的神经分类器进行采样后近似该分类器。这些规则定义了一个广义概率混合物,然后用来描述分类器。规则if-parts的大小或粒度定义了一个类似泡沫的结构,其中在patternclass中心有几个较大的规则if-part集气泡,在类边界附近有许多较小的if-part集。规则泡沫的混合物给出了规则的贝叶斯后验。后验描述了每个规则对于每个观察到的输入和输出的相对重要性。泡沫的混合物也给出了衡量其输出不确定性的条件方差。因此,该规则库具有统计可解释性、模块化和自适应性。具有1000条高斯规则的规则泡沫近似于96.85%准确率的MNIST神经分类器,其分类准确率为95.66%。泡沫也可以近似于其他泡沫。一些近似泡沫优于生成训练数据的目标泡沫。规则泡沫的粒度减轻了基于规则的近似器的图覆盖结构中固有的规则爆炸
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