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Online Learning: Sufficient Statistics and the Burkholder Method

机译:在线学习:充足的统计数据和Burkholder方法

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We uncover a fairly general principle in online learning: If a regret inequality can be (approximately) expressed as a function of certain "sufficient statistics" for the data sequence, then there exists a special Burkholder function that 1) can be used algorithmically to achieve the regret bound and 2) only depends on these sufficient statistics, not the entire data sequence, so that the online strategy is only required to keep the sufficient statistics in memory. This characterization is achieved by bringing the full power of the Burkholder Method—originally developed for certifying probabilistic martingale inequalities—to bear on the online learning setting. To demonstrate the scope and effectiveness of the Burkholder method, we develop a novel online strategy for matrix prediction that attains a regret bound corresponding to the variance term in matrix concentration inequalities. We also present a linear-time/space prediction strategy for parameter-free supervised learning with linear classes and general smooth norms.
机译:我们揭示了在线学习中一个相当普遍的原理:如果可以将(遗憾地)不等式表达为数据序列的某些“足够统计量”的函数,那么存在一个特殊的Burkholder函数,该函数可以通过算法1来实现2)仅取决于这些足够的统计信息,而不取决于整个数据序列,因此仅需要在线策略将足够的统计信息保留在内存中。通过将Burkholder方法的全部功能(最初用于证明概率mar不等式)引入在线学习环境中,可以实现这一特征。为了证明Burkholder方法的范围和有效性,我们开发了一种新颖的在线矩阵预测策略,该矩阵策略获得了与矩阵浓度不等式中的变量项相对应的后悔约束。我们还提出了一种线性时间/空间预测策略,用于使用线性类和一般光滑范数的无参数监督学习。

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