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Embedding Dimension of Polyhedral Losses

机译:嵌入多面体损失的维度

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A common technique in supervised learning with discrete losses, such as 0-1 loss, is to optimize a convex surrogate loss over Rd, calibrated with respect to the original loss. In particular, recent work has investigated embedding the original predictions (e.g. labels) as points in Rd, showing an equivalence to using polyhedral surrogates. In this work, we study the notion of the embedding dimension of a given discrete loss: the minimum dimension d such that an embedding exists. We characterize d-embeddability for all d, with a particularly tight characterization for d=1 (embedding into the real line), and useful necessary conditions for d>1 in the form of a quadratic feasibility program. We illustrate our results with novel lower bounds for abstain loss.
机译:通过离散损耗的监督学习的常用技术,例如0-1损失,是优化RD的凸代替代损失,相对于原始损失校准。特别是,最近的工作已经调查将原始预测(例如标签)嵌入RD中的点,显示使用多面体代理人的等价性。在这项工作中,我们研究了给定离散损失的嵌入尺寸的概念:最小尺寸D,使得嵌入存在。我们对所有D的D-EMBEDLEATIAL表征为D-EMBEDDATY,对于D = 1(嵌入真实线)的特征特别紧密,以及以二次可行性程序的形式的D> 1的有用条件。我们说明了我们的结果,具有弃权的小说下限。

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