TY - JOUR
T1 - Occasional structural breaks and long memory with an application to the S&P 500 absolute stock returns
AU - Granger, Clive W.J.
AU - Hyung, Namwon
PY - 2004/6
Y1 - 2004/6
N2 - This paper shows that occasional breaks generate slowly decaying autocorrelations and other properties of I(d) processes, where d can be a fraction. Some theory and simulation results show that it is not easy to distinguish between the long memory property from the occasional-break process and the one from the I(d) process. We compare two time series models, an occasional-break model and an I(d) model to analyze S&P 500 absolute stock returns. An occasional-break model performs marginally better than an I(d) model in terms of in-sample fitting. In general, we found that an occasional-break model provides less competitive forecasts, but not significantly. However, the empirical results suggest a possibility such that, at least, part of the long memory may be caused by the presence of neglected breaks in the series. We show that the forecasts by an occasional break model incorporate incremental information regrading future volatility beyond that found in I(d) model. The findings enable improvements of volatility prediction by combining I(d) model and occasional-break model.
AB - This paper shows that occasional breaks generate slowly decaying autocorrelations and other properties of I(d) processes, where d can be a fraction. Some theory and simulation results show that it is not easy to distinguish between the long memory property from the occasional-break process and the one from the I(d) process. We compare two time series models, an occasional-break model and an I(d) model to analyze S&P 500 absolute stock returns. An occasional-break model performs marginally better than an I(d) model in terms of in-sample fitting. In general, we found that an occasional-break model provides less competitive forecasts, but not significantly. However, the empirical results suggest a possibility such that, at least, part of the long memory may be caused by the presence of neglected breaks in the series. We show that the forecasts by an occasional break model incorporate incremental information regrading future volatility beyond that found in I(d) model. The findings enable improvements of volatility prediction by combining I(d) model and occasional-break model.
KW - Absolute stock return
KW - Autocorrelation
KW - Long memory
KW - Occasional structural breaks
UR - http://www.scopus.com/inward/record.url?scp=1942444547&partnerID=8YFLogxK
U2 - 10.1016/j.jempfin.2003.03.001
DO - 10.1016/j.jempfin.2003.03.001
M3 - Article
AN - SCOPUS:1942444547
SN - 0927-5398
VL - 11
SP - 399
EP - 421
JO - Journal of Empirical Finance
JF - Journal of Empirical Finance
IS - 3
ER -