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A common procedure when combining two multivariate unbiased estimates (or forecasts) is the covariance adjustment technique (CAT). Here the optimal combination weights depend on the covariance structure of the estimators. In practical applications, however, this covariance structure is hardly...
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If there are various forecasts for the same random variable, it is common practice to combine these forecasts in order to obtain a better forecast. But an important question is how to perform the combination, especially if the system under investigation is subject to structural changes and...
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When a forecaster predicts the future value of a certain random variable it is very likely that he will not only forecast that certain variable but he will also forecast other variables from the same field. In the literature on the combination of several individual forecasts univariate...
Persistent link: https://www.econbiz.de/10009775960
In Troschke (2002) the author introduces a linear approach to the scalar mean square error optimal combination of forecasts for a vector random variable. In this paper it is shown how the optimal combination parameters can be obtained with the help of linear regression. Thus the application of...
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If there are various forecasts for the same random variable, it is common practice to combine these forecasts in order to obtain a better forecast. But an important question is how to perform the combination, especially if the system under investigation is subject to structural changes and...
Persistent link: https://www.econbiz.de/10010316647