Guaranteed estimation of linear regression parameters under dependent disturbances (Q1286550)
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scientific article; zbMATH DE number 1283820
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Guaranteed estimation of linear regression parameters under dependent disturbances |
scientific article; zbMATH DE number 1283820 |
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Guaranteed estimation of linear regression parameters under dependent disturbances (English)
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1997
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The authors consider a regression model of the type \[ x_n= \sum^m_{j=1} \theta_j\varphi_j(n)+ \xi(n),\quad n\geq 1, \] where \(\varphi_i(n)\) are known deterministic functions, \(\xi(n)\) is the disturbance sequence, \(\theta_i\) are unknown parameters (deterministic trend). Mean-square guaranteed estimators of the regression parameters are constructed under the assumption that the disturbance is described by an autoregression process with unknown parameters and distribution. The method of sequential least-squares estimations of the parameters of the autoregression process is used for the solution to this problem. The authors construct the procedure of simultaneous estimation of the autoregression parameters and the deterministic trend, with given mean-square accuracy. Periodic trend is considered as a particular case. A limiting relation between the number of observations in the sequential procedure and estimation accuracy is derived.
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periodic trend
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regression model
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autoregression process
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least-squares estimations
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