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Minimax Learning of Ergodic Markov Chains

机译:遍历马尔可夫链的极小极大学习

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We compute the finite-sample minimax (modulo logarithmic factors) sample complexity of learning the parameters of a finite Markov chain from a single long sequence of states. Our error metric is a natural variant of total variation. The sample complexity necessarily depends on the spectral gap and minimal stationary probability of the unknown chain, for which there are known finite-sample estimators with fully empirical confidence intervals. To our knowledge, this is the first PAC-type result with nearly matching (up to logarithmic factors) upper and lower bounds for learning, in any metric, in the context of Markov chains.
机译:我们从单个长状态序列中学习有限马尔可夫链的参数,从而计算出有限样本minimax(模对数因子)样本的复杂度。我们的误差度量是总变化的自然变化。样本复杂度必然取决于未知链的谱间隙和最小平稳概率,为此,已知的样本估计量具有完全的经验置信区间。据我们所知,这是第一个PAC类型的结果,在马尔可夫链的情况下,无论哪种度量,其上界和下界都几乎匹配(高达对数因子)。

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