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Oracle Coached Decision Trees and Lists

机译:Oracle指导的决策树和列表

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This paper introduces a novel method for obtaining increased predictive performance from transparent models in situations where production input vectors are available when building the model. First, labeled training data is used to build a powerful opaque model, called an oracle. Second, the oracle is applied to production instances, generating predicted target values, which are used as labels. Finally, these newly labeled instances are utilized, in different combinations with normal training data, when inducing a transparent model. Experimental results, on 26 UCI data sets, show that the use of oracle coaches significantly improves predictive performance, compared to standard model induction. Most importantly, both accuracy and AUC results are robust over all combinations of opaque and transparent models evaluated. This study thus implies that the straightforward procedure of using a coaching oracle, which can be used with arbitrary classifiers, yields significantly better predictive performance at a low computational cost.
机译:本文介绍了一种新方法,该方法可在透明模型建立模型时可以使用生产输入向量的情况下,从透明模型中获得更高的预测性能。首先,带标签的训练数据用于构建功能强大的不透明模型,称为oracle。其次,将oracle应用于生产实例,生成预测目标值,这些目标值用作标签。最后,当引入透明模型时,将这些新标记的实例与正常训练数据以不同组合使用。在26个UCI数据集上的实验结果表明,与标准模型归纳法相比,使用Oracle教练可以显着提高预测性能。最重要的是,在所评估的不透明和透明模型的所有组合中,准确性和AUC结果均十分可靠。因此,这项研究表明,可以与任意分类器一起使用的使用指导预言的直接过程可以以较低的计算成本显着提高预测性能。

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