Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5095688 | Journal of Econometrics | 2016 | 11 Pages |
Abstract
We propose a bootstrap-based robust high-confidence level upper bound (Robust H-CLUB) for assessing the risks of large portfolios. The proposed approach exploits rank-based and quantile-based estimators, and can be viewed as a robust extension of the H-CLUB procedure (Fan et al., 2015). Such an extension allows us to handle possibly misspecified models and heavy-tailed data, which are stylized features in financial returns. Under mixing conditions, we analyze the proposed approach and demonstrate its advantage over H-CLUB. We further provide thorough numerical results to back up the developed theory, and also apply the proposed method to analyze a stock market dataset.
Related Topics
Physical Sciences and Engineering
Mathematics
Statistics and Probability
Authors
Jianqing Fan, Fang Han, Han Liu, Byron Vickers,