In this work, we investigate the expressiveness of the "conditional mutual information" (CMI) framework of Steinke and Zakynthinou (2020) and the prospect of using it to provide a unified framework for proving generalization bounds in the realizable setting. We first demonstrate that one can use this framework to express non-trivial (but sub-optimal) bounds for any learning algorithm that outputs hypotheses from a class of bounded VC dimension. We prove that the CMI framework yields the optimal bound on the expected risk of Support Vector Machines (SVMs) for learning halfspaces. This result is an application of our general result showing that stable compression schemes Bousquet al. (2020) of size $k$ have uniformly bounded CMI of order $O(k)$. We further show that an inherent limitation of proper learning of VC classes contradicts the existence of a proper learner with constant CMI, and it implies a negative resolution to an open problem of Steinke and Zakynthinou (2020). We further study the CMI of empirical risk minimizers (ERMs) of class $H$ and show that it is possible to output all consistent classifiers (version space) with bounded CMI if and only if $H$ has a bounded star number (Hanneke and Yang (2015)). Moreover, we prove a general reduction showing that "leave-one-out" analysis is expressible via the CMI framework. As a corollary we investigate the CMI of the one-inclusion-graph algorithm proposed by Haussler et al. (1994). More generally, we show that the CMI framework is universal in the sense that for every consistent algorithm and data distribution, the expected risk vanishes as the number of samples diverges if and only if its evaluated CMI has sublinear growth with the number of samples.
翻译:在这项工作中,我们调查Steinke和Zakynthinou(2020年)的“有条件相互信息”(CMI)框架(CMI)的清晰度,以及利用它提供统一框架以证明可实现环境的通用界限的前景。我们首先证明,我们可以利用这个框架来表达非三重(但亚最佳)的(非三重)界限,任何学习算法,即从受约束的VC层面产生产出的假设。我们证明,CMI框架在支持矢量机器(SVMs)学习半空的预期最终风险方面达到了最佳的界限。我们进一步研究了CMI的常规结果,显示稳定压缩计划(20202020年)的布斯凯特(CK202020年),统一约束了美元(CMI)的顺序。我们进一步表明,正确学习VCCMI课程的内在局限性与持续数字(如果CMILA的数值显示,那么CMI的数值就会持续减少,如果CMIL的数值会显示, AL的数值会显示,只有美元(ER)的数值的数值的数值会显示,那么, AL-C-CMILA(C-LA的数值的数值会显示,如果我们总的数值的数值的数值的数值的数值的数值会显示,则显示,只有一定的数值的数值的数值的数值的数值的数值的数值的数值会显示,则显示,也显示)的数值的数值会的数值会显示,则显示,只有一定的数值的数值的数值的数值的数值的数值的数值会的数值会减少的数值的数值会减少的数值。