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A Sharp Lower Bound for Agnostic Learning with Sample Compression Schemes

机译:锐利的下界,用于样本压缩方案的不可知论学习

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We establish a tight characterization of the worst-case rates for the excess risk of agnostic learning with sample compression schemes and for uniform convergence for agnostic sample compression schemes. In particular, we find that the optimal rates of convergence for size-$k$ agnostic sample compression schemes are of the form $sqrt{rac{k log(n/k)}{n}}$, which contrasts with agnostic learning with classes of VC dimension $k$, where the optimal rates are of the form $sqrt{rac{k}{n}}$.
机译:我们建立了最坏情况发生率的严密特征,即使用样本压缩方案的不可知论学习的过度风险以及不可知论样本压缩方案的统一收敛。特别是,我们发现大小为$ k $的不可知论样本压缩方案的最优收敛速率为$ sqrt { frac {k log(n / k)} {n}} $形式,与VC维$ k $类的不可知论学习,其中最优费率的形式为$ sqrt { frac {k} {n}} $。

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