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Rule Extraction with Guaranteed Fidelity

机译:保真度的规则提取

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This paper extends the conformal prediction framework to rule extraction, making it possible to extract interpretable models from opaque models in a setting where either the infidelity or the error rate is bounded by a predefined significance level. Experimental results on 27 publicly available data sets show that all three setups evaluated produced valid and rather efficient conformal predictors. The implication is that augmenting rule extraction with conformal prediction allows extraction of models where test set errors or test sets infidelities are guaranteed to be lower than a chosen acceptable level. Clearly this is beneficial for both typical rule extraction scenarios, i.e., either when the purpose is to explain an existing opaque model, or when it is to build a predictive model that must be interpretable.
机译:本文将保形预测框架扩展到规则提取,从而在不忠或错误率受预定义的显着性水平限制的情况下,可以从不透明模型中提取可解释模型。对27个可公开获得的数据集的实验结果表明,所评估的所有三个设置都产生了有效且相当有效的保形预测器。这意味着用保形预测进行的增强规则提取允许提取其中保证测试集错误或测试集不忠度低于选定可接受水平的模型。显然,这对于两种典型的规则提取方案都是有益的,即,当目的是解释现有的不透明模型时,或者在构建必须可解释的预测模型时,这都是有益的。

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