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Information-Theoretic Bounds on the Moments of the Generalization Error of Learning Algorithms

机译:信息 - 理论界限在学习算法的泛化误差时刻

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Generalization error bounds are critical to understanding the performance of machine learning models. In this work, building upon a new bound of the expected value of an arbitrary function of the population and empirical risk of a learning algorithm, we offer a more refined analysis of the generalization behaviour of a machine learning models based on a characterization of (bounds) to their generalization error moments. We discuss how the proposed bounds - which also encompass new bounds to the expected generalization error - relate to existing bounds in the literature. We also discuss how the proposed generalization error moment bounds can be used to construct new generalization error high-probability bounds.
机译:泛化误差界限对于了解机器学习模型的性能至关重要。 在这项工作中,建立一个新的函数的新界限的人口的预期价值和学习算法的经验风险,我们基于(界限的特征 )他们的泛化错误时刻。 我们讨论了拟议的界限 - 这也将新的界限与预期的泛化误差相关 - 与文献中的现有界限相关。 我们还讨论如何使用所提出的泛化错误时刻界限构建新的泛化误差高概率界限。

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