Simple regressions with linear time trends (Q2742771)
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scientific article; zbMATH DE number 1650412
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Simple regressions with linear time trends |
scientific article; zbMATH DE number 1650412 |
Statements
23 September 2001
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time series
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least squares statistics
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trend stationarity
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regression
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integrated series with drift
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Simple regressions with linear time trends (English)
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The author considers the following problem. Let \(x_t\) be a scalar trend stationary time series \(x_t =\gamma_x+\mu_x t+x_t^0\), \(\mu_x \neq 0\), \(t=1, 2,\ldots,T.\) The purely stochastic deviations from the linear trend are weakly stationary with zero mean. The scalar series \(y_t\) is given by \(y_t = a+b x_t +u_t\), \(t=1, 2,\ldots,T\), where the error \(u_t\) is again a zero-mean weakly stationary process that may be correlated with \(x_t^0.\) The problem is to find the limiting distribution of the ordinary least squares (OLS) estimator of \(a\) and \(b\). Let NEWLINE\[NEWLINE\hat b-b=\sum(x_t-\bar x)u_t/\sum (x_t-\bar x)^2,NEWLINE\]NEWLINE NEWLINE\[NEWLINE\omega_u^2=V(u_t)+2\sum_{\tau=1}^{\infty} \text{cov} (u_t, u_{t-\tau}),\quad T^{-1}\sum (u_t -\bar u)^2 \Rightarrow V(u_t),NEWLINE\]NEWLINE NEWLINE\[NEWLINE\hat u_t=y_t -\bar y - \hat b(x_t -\bar x),\quad s^2 =T^{-1}\sum \hat u_t^2,NEWLINE\]NEWLINE NEWLINE\[NEWLINER^2=1-s^2/T^{-1} \sum (y_t - \bar y)^2,\quad \hat\rho_u =(T^{-1}\sum_{t=2}^T \hat u_t \hat u_{t-1})/s^2,NEWLINE\]NEWLINE NEWLINE\[NEWLINEt_b=(\hat b -b) \bigl\{\sum (x_t - \bar x)^2 \bigr\}^{1/2}/s.NEWLINE\]NEWLINE The main result of this paper is the following. Under some assumptions on the OLS regression \(y_t = \hat b x_t + \hat u_t\), \(t=1, 2, \ldots, T\), the following assertion is true: NEWLINE\[NEWLINET^{1.5}(\hat b -b) \Rightarrow N\biggl(0, 12 \omega_u^2/\mu_x^2\biggr),\quad t_b \Rightarrow N\biggl(0, \omega_u^2/\sigma_u^2\biggr),NEWLINE\]NEWLINE NEWLINE\[NEWLINEs^2 {\buildrel P \over \longrightarrow} \sigma_u^2,\quad \hat{\rho_u} {\buildrel P \over \longrightarrow} \text{cov} (u_t, u_{t-1})/\sigma_u^2, \quad T^2 (1-R^2) {\buildrel P \over \longrightarrow} 12 \sigma_u^2/\mu_x^2 b^2,NEWLINE\]NEWLINE as \(T\to \infty\) with \(\sigma_u^2 = V(u_t)\).NEWLINENEWLINENEWLINEThe author concludes that when a linear trend dominates the stochastic components the rates of convergence and the limit distributions of OLS statistics are exactly the same as in the case of cointegrated regressions with drift. In particular, the asymptotic standard normal \(t\) statistics are available. The asymptotic inference requires no distinction between simple regressions of trend stationary series of cointegrated variables with drifts.
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