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Classification with decision trees from a nonparametric predictive inference perspective

机译:从非参数预测推理角度对决策树进行分类

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摘要

An application of nonparametric predictive inference for multinomial data (NPI) to classification tasks is presented. This model is applied to an established procedure for building classification trees using imprecise probabilities and uncertainty measures, thus far used only with the imprecise Dirichlet model (IDM), that is defined through the use of a parameter expressing previous knowledge. The accuracy of that procedure of classification has a significant dependence on the value of the parameter used when the IDM is applied. A detailed study involving 40 data sets shows that the procedure using the NPI model (which has no parameter dependence) obtains a better trade-off between accuracy and size of tree than does the procedure when the IDM is used, whatever the choice of parameter. In a biasvariance study of the errors, it is proved that the procedure with the NPI model has a lower variance than the one with the IDM, implying a lower level of over-fitting.
机译:提出了多项式数据的非参数预测推理在分类任务中的应用。该模型适用于使用不精确概率和不确定性度量来建立分类树的既定程序,到目前为止,仅用于不精确Dirichlet模型(IDM),该模型通过使用表达先前知识的参数进行定义。该分类过程的准确性很大程度上取决于应用IDM时使用的参数值。涉及40个数据集的详细研究表明,使用NPI模型(与参数无关)的过程比使用IDM时使用的过程(无论参数选择如何)在树的准确性和大小之间取得了更好的折衷。在误差的偏差方差研究中,证明了使用NPI模型的过程比使用IDM模型的过程具有更低的方差,这意味着较低的过度拟合水平。

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