首页> 外文会议>Annual Conference on Learning Theory(COLT 2006); 20060622-25; Pittsburgh,PA(US) >A Randomized Online Learning Algorithm for Better Variance Control
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A Randomized Online Learning Algorithm for Better Variance Control

机译:更好的方差控制的随机在线学习算法

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We propose a sequential randomized algorithm, which at each step concentrates on functions having both low risk and low variance with respect to the previous step prediction function. It satisfies a simple risk bound, which is sharp to the extent that the standard statistical learning approach, based on supremum of empirical processes, does not lead to algorithms with such a tight guarantee on its efficiency. Our generalization error bounds complement the pioneering work of Cesa-Bianchi et al. [12] in which standard-style statistical results were recovered with tight constants using worst-case analysis. A nice feature of our analysis of the randomized estimator is to put forward the links between the probabilistic and worst-case viewpoint. It also allows to recover recent model selection results due to Juditsky et al. [16] and to improve them in least square regression with heavy noise, i.e. when no exponential moment condition is assumed on the output.
机译:我们提出了一种顺序随机算法,该算法在每个步骤上都集中于相对于先前的步骤预测函数具有低风险和低方差的函数。它满足了一个简单的风险界限,这种风险界限非常明显,以至于基于经验过程的最高标准的标准统计学习方法不会导致算法对其效率的严格保证。我们的泛化误差范围补充了Cesa-Bianchi等人的开拓性工作。 [12]其中使用最坏情况分析以严格的常数恢复了标准样式的统计结果。我们对随机估计量的分析的一个很好的功能是提出概率观点与最坏情况观点之间的联系。由于Juditsky等人的缘故,它还可以恢复最近的模型选择结果。 [16]并在噪声较大的最小二乘回归中进行改进,即在输出上未假设指数矩条件的情况下。

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