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引用次数: 76

摘要

我们展示了在机器学习中研究的几个重要的贝叶斯界,无论是在批处理还是在线设置中,都是由一个简单的压缩引理的应用产生的。特别地,我们使用压缩引理推导出(i)批处理设置下的PAC-Bayesian边界,(ii)贝叶斯对数损失边界和(iii)在线设置下的贝叶斯有界损失边界。尽管每种设置对于先验、后验和损失具有不同的语义,但我们证明了核心界参数是相同的。这篇论文简化了我们对几个重要的、明显不同的结果的理解,同时也为其他方法提供了一个强大的工具,可以为类似的论点提供支持。
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On Bayesian bounds
We show that several important Bayesian bounds studied in machine learning, both in the batch as well as the online setting, arise by an application of a simple compression lemma. In particular, we derive (i) PAC-Bayesian bounds in the batch setting, (ii) Bayesian log-loss bounds and (iii) Bayesian bounded-loss bounds in the online setting using the compression lemma. Although every setting has different semantics for prior, posterior and loss, we show that the core bound argument is the same. The paper simplifies our understanding of several important and apparently disparate results, as well as brings to light a powerful tool for developing similar arguments for other methods.
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