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Generalization and Robustness of Batched Weighted Average Algorithm with V-Geometrically Ergodic Markov Data

机译:V几何遍历马尔可夫数据的批量加权平均算法的推广与鲁棒性

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We analyze the generalization and robustness of the batched weighted average algorithm for V-geometrically ergodic Markov data. This algorithm is a good alternative to the empirical risk minimization algorithm when the latter suffers from overfitting or when optimizing the empirical risk is hard. For the generalization of the algorithm, we prove a PAC-style bound on the training sample size for the expected Li-loss to converge to the optimal loss when training data are V-geometrically ergodic Markov chains. For the robustness, we show that if the training target variable's values contain bounded noise, then the generalization bound of the algorithm deviates at most by the range of the noise. Our results can be applied to the regression problem, the classification problem, and the case where there exists an unknown deterministic target hypothesis.
机译:我们分析了V遍历遍历Markov数据的批处理加权平均算法的推广性和鲁棒性。当经验风险最小化算法过度拟合或难以优化经验风险时,该算法可以很好地替代经验风险最小化算法。对于算法的一般化,我们证明了训练样本为V几何遍历马尔可夫链时,预期Li损失收敛于最佳损失的训练样本大小上的PAC样式约束。为了提高鲁棒性,我们表明,如果训练目标变量的值包含有界噪声,则算法的泛化界线最多会偏离噪声范围。我们的结果可以应用于回归问题,分类问题以及存在未知的确定性目标假设的情况。

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