Smoothing Time Series with Local Polynomial Regression on Time |
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Authors: | Johannes Ledolter |
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Affiliation: | 1. Department of Management Sciences, Department of Statistics and Actuarial Science , University of Iowa , Iowa City, Iowa, USA johannes-ledolter@uiowa.edu |
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Abstract: | ![]() Time series smoothers estimate the level of a time series at time t as its conditional expectation given present, past and future observations, with the smoothed value depending on the estimated time series model. Alternatively, local polynomial regressions on time can be used to estimate the level, with the implied smoothed value depending on the weight function and the bandwidth in the local linear least squares fit. In this article we compare the two smoothing approaches and describe their similarities. Through simulations, we assess the increase in the mean square error that results when approximating the estimated optimal time series smoother with the local regression estimate of the level. |
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Keywords: | Local polynomial regression Structural time series model Time series smoothing Trend model Weighted least squares |
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