Forecasting economic time series using locally stationary processes
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Stationarity has always played an important part in forecasting theory. However, some economic time series show time-varying autocovariances. The question arises whether forecasts can be improved using models that capture such a time-varying second-order structure. One possibility is given by autoregressive models with time-varying parameters. The author focuses on the development of a forecasting procedure for these processes and compares this approach to classical forecasting methods by means of Monte Carlo simulations. An evaluation of the proposed procedure is given by its application to futures prices and the Dow Jones index. The approach turns out to be superior to the classical methods if the sample sizes are large and the forecasting horizons do not range too far into the future.
Nákup knihy
Forecasting economic time series using locally stationary processes, Tina Loll
- Jazyk
- Rok vydání
- 2012
Doručení
Platební metody
2021 2022 2023
Navrhnout úpravu
- Titul
- Forecasting economic time series using locally stationary processes
- Jazyk
- anglicky
- Autoři
- Tina Loll
- Vydavatel
- Lang
- Rok vydání
- 2012
- Vazba
- pevná
- ISBN10
- 3631621876
- ISBN13
- 9783631621875
- Série
- Volkswirtschaftliche Analysen
- Kategorie
- Skripta a vysokoškolské učebnice
- Anotace
- Stationarity has always played an important part in forecasting theory. However, some economic time series show time-varying autocovariances. The question arises whether forecasts can be improved using models that capture such a time-varying second-order structure. One possibility is given by autoregressive models with time-varying parameters. The author focuses on the development of a forecasting procedure for these processes and compares this approach to classical forecasting methods by means of Monte Carlo simulations. An evaluation of the proposed procedure is given by its application to futures prices and the Dow Jones index. The approach turns out to be superior to the classical methods if the sample sizes are large and the forecasting horizons do not range too far into the future.