Interpolation,outliers mid inverse autocorrelations |
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Authors: | Daniel Piña Agustin Maravall |
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Affiliation: | 1. Departmento Economía , Universidad Carlos III de , Madrid, Getafe, 28903, Spain;2. Department of Economics , European University Institute , S.Domenico di Fiesole (FI), 50016, Italy |
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Abstract: | The paper addresses the problem of estimating missing observations in an infinite realization of a linear, possibly nonstationary, stochastic processes when the model is known. The general case of any possible distribution of missing observations in the time series is considered, and analytical expressions for the optimal estimators and their associated mean squared errors are obtained. These expressions involve solely the elements of the inverse or dual autocorrelation function of the series. This optimal estimator -the conditional expectation of the missing observations given the available ones- is equal to the estimator that results from filling the missing values in the series with arbitrary numbers, treating these numbers as additive outliers, and removing with intervention analysis the outlier effects from the invented numbers. |
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Keywords: | Missing observations outliers Intervention analysis ARIMA models Inverse autocorrelation function |
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