The foundations of finite sample estimation in stochastic processes

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Abstract

The Gauss-Markov theorem on least squares for linear models derives its general applicability because it depends on the underlying distribution only through the first two moments. In this paper, a similar theorem is established within the context of stochastic processes. Various problems of finite sample estimation are solved by application of this theorem. © 1985 Biometrika Trust.

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Godambe, V. P. (1985). The foundations of finite sample estimation in stochastic processes. Biometrika, 72(2), 419–428. https://doi.org/10.1093/biomet/72.2.419

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