
This paper proposes a wavelet (spectral) approach to estimate the parameters of a linear regression model where the regressand and the regressors are persistent processes and contain a measurement error. We propose a wavelet filtering approach which does not require instruments and yields unbiased estimates for the intercept and the slope parameters. Our Monte Carlo results also show that the wavelet approach is particularly effective when measurement errors for the regressand and the regressor are serially correlated. With this paper, we hope to bring a fresh perspective and stimulate further theoretical research in this area.
2604 Applied Mathematics, 10003 Department of Finance, 1804 Statistics, Probability and Uncertainty, 2613 Statistics and Probability, 330 Economics, 2611 Modeling and Simulation
2604 Applied Mathematics, 10003 Department of Finance, 1804 Statistics, Probability and Uncertainty, 2613 Statistics and Probability, 330 Economics, 2611 Modeling and Simulation
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