Location-based estimation of the autoregressive coefficient in ARX(1) models

Magister Scientiae - MSc === In recent years, two estimators have been proposed to correct the bias exhibited by the leastsquares (LS) estimator of the lagged dependent variable (LDV) coefficient in dynamic regression models when the sample is finite. They have been termed as ‘mean-unbiase...

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Main Author: Kamanu, Timothy Kevin Kuria
Other Authors: Koen, Chris
Language:en
Published: University of the Western Cape 2013
Subjects:
Online Access:http://hdl.handle.net/11394/2009
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spelling ndltd-netd.ac.za-oai-union.ndltd.org-uwc-oai-etd.uwc.ac.za-11394-20092017-08-02T04:00:05Z Location-based estimation of the autoregressive coefficient in ARX(1) models Kamanu, Timothy Kevin Kuria Koen, Chris Dept. of Statistics Faculty of Science Time series analysis Unit root tests Near unit root processes Overdifferencing Unbiased estimation of autocorrelation Probability density of AR(1) coefficient Non-stationary AR(1) processes Mode estimation Testing for stationarity versus testing for nonstationarity Box-Jenkins modelling Magister Scientiae - MSc In recent years, two estimators have been proposed to correct the bias exhibited by the leastsquares (LS) estimator of the lagged dependent variable (LDV) coefficient in dynamic regression models when the sample is finite. They have been termed as ‘mean-unbiased’ and ‘medianunbiased’ estimators. Relative to other similar procedures in the literature, the two locationbased estimators have the advantage that they offer an exact and uniform methodology for LS estimation of the LDV coefficient in a first order autoregressive model with or without exogenous regressors i.e. ARX(1). However, no attempt has been made to accurately establish and/or compare the statistical properties among these estimators, or relative to those of the LS estimator when the LDV coefficient is restricted to realistic values. Neither has there been an attempt to  compare their performance in terms of their mean squared error (MSE) when various forms of the exogenous regressors are considered. Furthermore, only implicit confidence intervals have been given for the ‘medianunbiased’ estimator. Explicit confidence bounds that are directly usable for inference are not available for either estimator. In this study a new estimator of the LDV coefficient is proposed; the ‘most-probably-unbiased’ estimator. Its performance properties vis-a-vis the existing estimators are determined and compared when the parameter space of the LDV coefficient is restricted. In addition, the following new results are established: (1) an explicit computable form for the density of the LS estimator is derived for the first time and an efficient method for its numerical evaluation is proposed; (2) the exact bias, mean, median and mode of the distribution of the LS estimator are determined in three specifications of the ARX(1) model; (3) the exact variance and MSE of LS estimator is determined; (4) the standard error associated with the determination of same quantities when simulation rather than numerical integration method is used are established and the methods are compared in terms of computational time and effort; (5) an exact method of evaluating the density of the three estimators is described; (6) their exact bias, mean, variance and MSE are determined and analysed; and finally, (7) a method of obtaining the explicit exact confidence intervals from the distribution functions of the estimators is proposed. The discussion and results show that the estimators are still biased in the usual sense: ‘in expectation’. However the bias is substantially reduced compared to that of the LS estimator. The findings are important in the specification of time-series regression models, point and interval estimation, decision theory, and simulation. South Africa 2013-08-27T13:48:09Z 2007/08/10 15:19 2007/08/10 2013-08-27T13:48:09Z 2006 Thesis http://hdl.handle.net/11394/2009 en University of the Western Cape University of the Western Cape
collection NDLTD
language en
sources NDLTD
topic Time series analysis
Unit root tests
Near unit root processes
Overdifferencing
Unbiased estimation of autocorrelation
Probability density of AR(1) coefficient
Non-stationary AR(1) processes
Mode estimation
Testing for stationarity versus testing for nonstationarity
Box-Jenkins modelling
spellingShingle Time series analysis
Unit root tests
Near unit root processes
Overdifferencing
Unbiased estimation of autocorrelation
Probability density of AR(1) coefficient
Non-stationary AR(1) processes
Mode estimation
Testing for stationarity versus testing for nonstationarity
Box-Jenkins modelling
Kamanu, Timothy Kevin Kuria
Location-based estimation of the autoregressive coefficient in ARX(1) models
description Magister Scientiae - MSc === In recent years, two estimators have been proposed to correct the bias exhibited by the leastsquares (LS) estimator of the lagged dependent variable (LDV) coefficient in dynamic regression models when the sample is finite. They have been termed as ‘mean-unbiased’ and ‘medianunbiased’ estimators. Relative to other similar procedures in the literature, the two locationbased estimators have the advantage that they offer an exact and uniform methodology for LS estimation of the LDV coefficient in a first order autoregressive model with or without exogenous regressors i.e. ARX(1). However, no attempt has been made to accurately establish and/or compare the statistical properties among these estimators, or relative to those of the LS estimator when the LDV coefficient is restricted to realistic values. Neither has there been an attempt to  compare their performance in terms of their mean squared error (MSE) when various forms of the exogenous regressors are considered. Furthermore, only implicit confidence intervals have been given for the ‘medianunbiased’ estimator. Explicit confidence bounds that are directly usable for inference are not available for either estimator. In this study a new estimator of the LDV coefficient is proposed; the ‘most-probably-unbiased’ estimator. Its performance properties vis-a-vis the existing estimators are determined and compared when the parameter space of the LDV coefficient is restricted. In addition, the following new results are established: (1) an explicit computable form for the density of the LS estimator is derived for the first time and an efficient method for its numerical evaluation is proposed; (2) the exact bias, mean, median and mode of the distribution of the LS estimator are determined in three specifications of the ARX(1) model; (3) the exact variance and MSE of LS estimator is determined; (4) the standard error associated with the determination of same quantities when simulation rather than numerical integration method is used are established and the methods are compared in terms of computational time and effort; (5) an exact method of evaluating the density of the three estimators is described; (6) their exact bias, mean, variance and MSE are determined and analysed; and finally, (7) a method of obtaining the explicit exact confidence intervals from the distribution functions of the estimators is proposed. The discussion and results show that the estimators are still biased in the usual sense: ‘in expectation’. However the bias is substantially reduced compared to that of the LS estimator. The findings are important in the specification of time-series regression models, point and interval estimation, decision theory, and simulation. === South Africa
author2 Koen, Chris
author_facet Koen, Chris
Kamanu, Timothy Kevin Kuria
author Kamanu, Timothy Kevin Kuria
author_sort Kamanu, Timothy Kevin Kuria
title Location-based estimation of the autoregressive coefficient in ARX(1) models
title_short Location-based estimation of the autoregressive coefficient in ARX(1) models
title_full Location-based estimation of the autoregressive coefficient in ARX(1) models
title_fullStr Location-based estimation of the autoregressive coefficient in ARX(1) models
title_full_unstemmed Location-based estimation of the autoregressive coefficient in ARX(1) models
title_sort location-based estimation of the autoregressive coefficient in arx(1) models
publisher University of the Western Cape
publishDate 2013
url http://hdl.handle.net/11394/2009
work_keys_str_mv AT kamanutimothykevinkuria locationbasedestimationoftheautoregressivecoefficientinarx1models
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