High frequency financial data modelling has become one of the important research areas in the field of financial econometrics. However, the possible structural break in volatile financial time series often trigger inconsistency issue in volatility estimation. In this study, we propose a structural break heavy-tailed heterogeneous autoregressive (HAR) volatility econometric model with the enhancement of jump-robust estimators. The breakpoints in the volatility are captured by dummy variables after the detection by Bai-Perron sequential multi breakpoints procedure. In order to further deal with possible abrupt jump in the volatility, the jump-robust volatility estimators are composed by using the nearest neighbor truncation approach, namely the minimum and median realized volatility. Under the structural break improvements in both the models and volatility estimators, the empirical findings show that the modified HAR model provides the best performing in-sample and out-of-sample forecast evaluations as compared with the standard HAR models. Accurate volatility forecasts have direct influential to the application of risk management and investment portfolio analysis.
Heterogeneous autoregressive model with structural break using nearest neighbor truncation volatility estimators for DAX.
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作者:Chin Wen Cheong, Lee Min Cherng, Yap Grace Lee Ching
| 期刊: | Springerplus | 影响因子: | 0.000 |
| 时间: | 2016 | 起止号: | 2016 Nov 6; 5(1):1883 |
| doi: | 10.1186/s40064-016-3465-x | ||
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