Estimators of covariances in time series models
Yogendra P. Chaubey
Statistics & Probability Letters, 1985, vol. 3, issue 1, 51-53
Abstract:
The theory of Minimum Norm Quadratic Estimators for estimating variances and covariances is applied to show that some commonly used estimators of covariances in time series models are easily derived using the above principle. In applying the theory MINQE, it is observed that no unbiased estimator exists in the class of invariant quadratics.
Keywords: jackknife; estimator; minimum; norm; quadratic; estimator; autocovariance; estimation (search for similar items in EconPapers)
Date: 1985
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