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Generalization Performance of ERM Algorithm with Geometrically Ergodic Markov Chain Samples

机译:几何遍历马尔可夫链样本的ERM算法的广义性能

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The previous works describing the generalization ability of learning algorithms are based on independent and identically distributed (i.i.d.) samples. In this paper we go far beyond this classical framework by studying the learning performance of the Empirical Risk Minimization (ERM) algorithm with Markov chain samples. We obtain the bound on the rate of uniform convergence of the ERM algorithm with geometrically ergodic Markov chain samples, as an application of our main result we establish the bounds on the generalization performance of the ERM algorithm, and show that the ERM algorithm with geometrically ergodic Markov chain samples is consistent. These results obtained in this paper extend the previously known results of i.i.d. observations to the case of Markov dependent samples.
机译:先前描述学习算法泛化能力的工作是基于独立且分布均匀的(i.i.d.)样本。在本文中,我们通过研究带有马尔可夫链样本的经验风险最小化(ERM)算法的学习性能,超越了传统框架。利用几何遍历马尔可夫链样本,获得了ERM算法均匀收敛速度的界,作为我们主要结果的应用,我们建立了ERM算法泛化性能的界,并证明了几何遍历的ERM算法马尔可夫链样本是一致的。本文获得的这些结果扩展了i.i.d的先前已知结果。对马尔可夫依赖样本的观察。

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