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A Chain Rule for the Expected Suprema of Gaussian Processes

机译:高斯过程期望极值的链式规则

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The expected supremum of a Gaussian process indexed by the image of an index set under a function class is bounded in terms of separate properties of the index set and the function class. The bound is relevant to the estimation of nonlinear transformations or the analysis of learning algorithms whenever hypotheses are chosen from composite classes, as is the case for multi-layer models.
机译:由函数集下的索引集的图像索引的高斯过程的期望极值以索引集和函数类的单独属性为界。每当从复合类中选择假设时,边界就与非线性变换的估计或学习算法的分析有关,多层模型就是这种情况。

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