A Short Information-Theoretic Analysis of Linear Auto-Regressive Learning

Ingvar Ziemann
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Abstract

In this note, we give a short information-theoretic proof of the consistency of the Gaussian maximum likelihood estimator in linear auto-regressive models. Our proof yields nearly optimal non-asymptotic rates for parameter recovery and works without any invocation of stability in the case of finite hypothesis classes.
线性自回归学习的简短信息理论分析
在本说明中,我们给出了线性自回归模型中高斯极大似然估计器一致性的简短信息论证明。我们的证明为参数恢复提供了近乎最优的非渐近率,并且在有限假设类的情况下无需引用任何稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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