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PAC-Bayes-Empirical-Bernstein Inequality

机译:Pac-Bayes-Empirical-Bernstein不等式

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摘要

We present a PAC-Bayes-Empirical-Bernstein inequality. The inequality is based on a combination of the PAC-Bayesian bounding technique with an Empirical Bernstein bound. We show that when the empirical variance is significantly smaller than the empirical loss the PAC-Bayes-Empirical-Bernstein inequality is significantly tighter than the PAC-Bayes-kl inequality of Seeger (2002) and otherwise it is comparable. Our theoretical analysis is confirmed empirically on a synthetic example and several UCI datasets. The PAC-Bayes-Empirical-Bernstein inequality is an interesting example of an application of the PAC-Bayesian bounding technique to self-bounding functions.
机译:我们提出了Pac-Bayes-Empirical-Bernstein不等式。不等式是基于Pac-Bayesian边界技术与经验伯尔尼斯坦绑定的组合。我们表明,当经验方差明显小于经验损失时,PAC-Bayes-Empirical-Bernstein不等式比Seeger(2002)的Pac-Bayes-KL不等式显着更严重,否则它是可比的。我们的理论分析是在综合示例和几个UCI数据集上经验证明的。 Pac-Bayes-empirical-Bernstein不等式是PAC-Bayesian边界技术在自限函数中应用的有趣示例。

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