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Predictive Discretization During Model Selection

机译:模型选择期间的预测离散化

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We present an approach to discretizing multivariate continuous data while learning the structure of a graphical model. We derive a joint scoring function from the principle of predictive accuracy, which inherently ensures the optimal trade-off between goodness of fit and model complexity including the number of discretization levels. Using the so-called finest grid implied by the data, our scoring function depends only on the number of data points in the various discretization levels (independent of the metric used in the continuous space). Our experiments with artificial data as well as with gene expression data show that discretization plays a crucial role regarding the resulting network structure.
机译:我们提出了一种在学习图形模型结构的同时离散化多变量连续数据的方法。我们从预测准确性的原理中得出一个联合评分函数,该函数固有地确保了拟合优度与模型复杂度(包括离散化级别的数量)之间的最佳折衷。使用数据隐含的所谓的最佳网格,我们的评分功能仅取决于各个离散级别中的数据点数量(与连续空间中使用的度量标准无关)。我们对人工数据和基因表达数据的实验表明,离散化对于最终的网络结构起着至关重要的作用。

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