Pär Stockhammar
Stockholm University
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Publication
Featured researches published by Pär Stockhammar.
Journal of Applied Statistics | 2011
Pär Stockhammar; Lars-Erik Öller
Three important and significantly heteroscedastic gross domestic product series are studied. Omnipresent heteroscedasticity is removed and the distributions of the series are then compared to normal, normal mixture and normal–asymmetric Laplace (NAL) distributions. NAL represents a skewed and leptokurtic distribution, which is in line with the Aghion and Howitt [1] model for economic growth, based on Schumpeters idea of creative destruction. Statistical properties of the NAL distributions are provided and it is shown that NAL fits the data better than the alternatives.
Communications in Statistics-theory and Methods | 2012
Pär Stockhammar; Lars-Erik Öller
In this article, variance stabilizing filters are discussed. A new filter with nice properties is proposed which makes use of moving averages and moving standard deviations, the latter smoothed with the Hodrick-Prescott filter. This filter is compared to a GARCH-type filter. An ARIMA model is estimated for the filtered GDP series, and the parameter estimates are used in forecasting the unfiltered series. These forecasts compare well with those of ARIMA, ARFIMA, and GARCH models based on the unfiltered data. The filter does not color white noise.
Journal of Applied Statistics | 2016
Mahmood Ul Hassan; Pär Stockhammar
ABSTRACT The growth rate of the gross domestic product (GDP) usually carries heteroscedasticity, asymmetry and fat-tails. In this study three important and significantly heteroscedastic GDP series are examined. A Normal, normal-mixture, normal-asymmetric Laplace distribution and a Students t-Asymmetric Laplace (TAL) distribution mixture are considered for distributional fit comparison of GDP growth series after removing heteroscedasticity. The parameters of the distributions have been estimated using maximum likelihood method. Based on the results of different accuracy measures, goodness-of-fit tests and plots, we find out that in the case of asymmetric, heteroscedastic and highly leptokurtic data the TAL-distribution fits better than the alternatives. In the case of asymmetric, heteroscedastic but less leptokurtic data the NM fit is superior. Furthermore, a simulation study has been carried out to obtain standard errors for the estimated parameters. The results of this study might be used in e.g. density forecasting of GDP growth series or to compare different economies.
MPRA Paper | 2009
Lars-Erik Öller; Pär Stockhammar
Ekonomiska Samfundets Tidskrift | 2011
Pär Stockhammar; Lars-Erik Öller
Archive | 2010
Pär Stockhammar
International Journal of Forecasting | 2010
Lars-Erik Öller; Pär Stockhammar
International Journal of Forecasting | 2008
Lars-Erik Öller; Pär Stockhammar
International Journal of Forecasting | 2008
Lars-Erik Öller; Pär Stockhammar
International Journal of Forecasting | 2008
Lars-Erik Öller; Pär Stockhammar