Shifting: One-inclusion mistake bounds and sample compression

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摘要

We present new expected risk bounds for binary and multiclass prediction, and resolve several recent conjectures on sample compressibility due to Kuzmin and Warmuth. By exploiting the combinatorial structure of concept class F, Haussler et al. achieved a VC(F)/n bound for the natural one-inclusion prediction strategy. The key step in their proof is a d=VC(F) bound on the graph density of a subgraph of the hypercube—one-inclusion graph. The first main result of this paper is a density bound of n(n−1⩽d−1)/(n⩽d)

论文关键词:One-inclusion mistake bounds,Worst-case expected risk,Multiclass prediction,Sample compression,Shifting

论文评审过程:Received 24 May 2007, Revised 18 March 2008, Available online 18 July 2008.

论文官网地址:https://doi.org/10.1016/j.jcss.2008.07.005