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On statistical learning via the lens of compression

机译:通过压缩镜片统计学习

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This work continues the study of the relationship between sample compression schemes and statistical learning, which has been mostly investigated within the framework of binary classification. The central theme of this work is establishing equivalences between learnability and compressibility, and utilizing these equivalences in the study of statistical learning theory. We begin with the setting of multiclass categorization (zero/one loss). We prove that in this case learnability is equivalent to compression of logarithmic sample size, and that uniform convergence implies compression of constant size. We then consider Vapnik's general learning setting: we show that in order to extend the compressibility-learnability equivalence to this case, it is necessary to consider an approximate variant of compression. Finally, we provide some applications of the compressibility-leamability equivalences.
机译:这项工作继续研究样品压缩方案和统计学习之间的关系,这主要在二进制分类框架内进行了研究。这项工作的中心主题是在学习能力和可压缩性之间建立等效性,并利用这些等同性在统计学习理论的研究中。我们从多种子序分类的设置开始(零/一个损耗)。我们证明,在这种情况下,可学习性等同于对数样本大小的压缩,并且该均匀收敛意味着压缩恒定大小。然后我们考虑VAPnik的一般学习环境:我们表明,为了将可压缩性学习的等效性扩展到这种情况,有必要考虑压缩的近似变体。最后,我们提供了一些可压缩性导航等效命令的应用。

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