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首页> 外文期刊>Biometrika >STRONG CONSISTENCY IN STOCHASTIC REGRESSION MODELS VIA POSTERIOR COVARIANCE MATRICES
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STRONG CONSISTENCY IN STOCHASTIC REGRESSION MODELS VIA POSTERIOR COVARIANCE MATRICES

机译:通过后方差矩阵在随机回归模型中的强一致性

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In this paper Ne use posterior covariance matrices to study the strong consistency of Bayes estimators in stochastic regression models under various assumptions on the stochastic regressors. The random errors are assumed to form a martingale difference sequence. Several results are obtained using a recursion satisfied by the sequence of posterior covariance matrices. These results suggest that the posterior covariance matrix is a useful tool in studying strong consistency problems in stochastic regression models. Three examples from sequential design and adaptive control are discussed. [References: 15]
机译:在本文中,Ne使用后协方差矩阵研究了随机回归模型在各种假设下的随机回归模型中的贝叶斯估计量的强一致性。假定随机误差形成a差序列。使用后协方差矩阵序列满足的递归可以获得一些结果。这些结果表明,后协方差矩阵是研究随机回归模型中强一致性问题的有用工具。讨论了顺序设计和自适应控制的三个例子。 [参考:15]

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