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Structural Online Learning

机译:结构在线学习

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摘要

We study the problem of learning ensembles in the online setting, when the hypotheses are selected out of a base family that may be a union of possibly very complex sub-families. We prove new theoretical guarantees for the online learning of such ensembles in terms of the sequential Rademacher complexities of these sub-families. We also describe an algorithm that benefits from such guarantees. We further extend our framework by proving new structural estimation error guarantees for ensembles in the batch setting through a new data-dependent online-to-batch conversion technique, thereby also devising an effective algorithm for the batch setting which does not require the estimation of the Rademacher complexities of base sub-families.
机译:我们研究在线设置中学习合奏的问题,当从一个可能是可能非常复杂的子家庭的联盟的基础家庭中选择了假设。在这些子家庭的连续改造复杂性方面,我们证明了在线学习的新理论保障。我们还描述了一种从这种保证中受益的算法。我们通过新数据依赖于批量转换技术证明新的结构估计错误保证新的结构估计误差保证了新的结构估计误差,从而设计了对批量设置的有效算法,这些算法不需要估计基础子家庭的Rademacher复杂性。

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