On testing and forecasting in fractionally integrated time series models

This volume contains five essays in the field of time series econometrics. All five discuss properties of fractionally integrated processes and models. The first essay, entitled Do Long-Memory Models have Long Memory?, demonstrates that fractional integration can enhance the memory of ARMA processes...

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Main Author: Andersson, Michael K.
Format: Doctoral Thesis
Language:English
Published: Handelshögskolan i Stockholm, Ekonomisk Statistik (ES) 1998
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:hhs:diva-667
http://nbn-resolving.de/urn:isbn:91-7258-467-X
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spelling ndltd-UPSALLA1-oai-DiVA.org-hhs-6672013-01-08T13:07:43ZOn testing and forecasting in fractionally integrated time series modelsengAndersson, Michael K.Handelshögskolan i Stockholm, Ekonomisk Statistik (ES)Stockholm : Economic Research Institute, Stockholm School of Economics [Ekonomiska forskningsinstitutet vid Handelshögsk.] (EFI)1998Long memoryBootstrap testingFractional CointegrationEconometricsEkonometriThis volume contains five essays in the field of time series econometrics. All five discuss properties of fractionally integrated processes and models. The first essay, entitled Do Long-Memory Models have Long Memory?, demonstrates that fractional integration can enhance the memory of ARMA processes enormously. This is however not true for all combinations of diffe-rencing, autoregressive and moving average parameters. The second essay, with the title On the Effects of Imposing or Ignoring Long-Memory when Forecasting, investigates how the choice between mo-delling stationary time series as ARMA or ARFIMA processes affect the accu-racy of forecasts. The results suggest that ignoring long-memory is worse than imposing it and that the maximum likelihood estimator for the ARFIMA model is to prefer. The third essay, Power and Bias of Likelihood Based Inference in the Cointegration Model under Fractional Cointegration, investigates the performance of the usual cointegration approach when the processes are fractionally cointegrated. Under these circumstances, it is shown that the maximum likelihood estimates of the long-run relationship are severely biased. The fourth and fifth essay, entitled respectively Bootstrap Testing for Fractional Integration and Robust Testing for Fractional Integration using the Bootstrap, propose and investigate the performance of some bootstrap testing procedures for fractional integration. The results suggest that the empirical size of a bootstrap test is (almost) always close to the nominal, and that a well-designed bootstrap test is quite robust to deviations from standard assumptions. Diss. Stockholm : Handelshögsk. [7] s., s. x-xiv, s. 1-26: sammanfattning, s. 27-111, [4] s.: 5 uppsatserDoctoral thesis, comprehensive summaryinfo:eu-repo/semantics/doctoralThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:hhs:diva-667urn:isbn:91-7258-467-Xapplication/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Long memory
Bootstrap testing
Fractional Cointegration
Econometrics
Ekonometri
spellingShingle Long memory
Bootstrap testing
Fractional Cointegration
Econometrics
Ekonometri
Andersson, Michael K.
On testing and forecasting in fractionally integrated time series models
description This volume contains five essays in the field of time series econometrics. All five discuss properties of fractionally integrated processes and models. The first essay, entitled Do Long-Memory Models have Long Memory?, demonstrates that fractional integration can enhance the memory of ARMA processes enormously. This is however not true for all combinations of diffe-rencing, autoregressive and moving average parameters. The second essay, with the title On the Effects of Imposing or Ignoring Long-Memory when Forecasting, investigates how the choice between mo-delling stationary time series as ARMA or ARFIMA processes affect the accu-racy of forecasts. The results suggest that ignoring long-memory is worse than imposing it and that the maximum likelihood estimator for the ARFIMA model is to prefer. The third essay, Power and Bias of Likelihood Based Inference in the Cointegration Model under Fractional Cointegration, investigates the performance of the usual cointegration approach when the processes are fractionally cointegrated. Under these circumstances, it is shown that the maximum likelihood estimates of the long-run relationship are severely biased. The fourth and fifth essay, entitled respectively Bootstrap Testing for Fractional Integration and Robust Testing for Fractional Integration using the Bootstrap, propose and investigate the performance of some bootstrap testing procedures for fractional integration. The results suggest that the empirical size of a bootstrap test is (almost) always close to the nominal, and that a well-designed bootstrap test is quite robust to deviations from standard assumptions. === Diss. Stockholm : Handelshögsk. [7] s., s. x-xiv, s. 1-26: sammanfattning, s. 27-111, [4] s.: 5 uppsatser
author Andersson, Michael K.
author_facet Andersson, Michael K.
author_sort Andersson, Michael K.
title On testing and forecasting in fractionally integrated time series models
title_short On testing and forecasting in fractionally integrated time series models
title_full On testing and forecasting in fractionally integrated time series models
title_fullStr On testing and forecasting in fractionally integrated time series models
title_full_unstemmed On testing and forecasting in fractionally integrated time series models
title_sort on testing and forecasting in fractionally integrated time series models
publisher Handelshögskolan i Stockholm, Ekonomisk Statistik (ES)
publishDate 1998
url http://urn.kb.se/resolve?urn=urn:nbn:se:hhs:diva-667
http://nbn-resolving.de/urn:isbn:91-7258-467-X
work_keys_str_mv AT anderssonmichaelk ontestingandforecastinginfractionallyintegratedtimeseriesmodels
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