Affiliation:
1. Graduate Institute of Statistics National Central University Taiwan
2. Department of Finance National University of Kaohsiung Taiwan
Abstract
AbstractIn this study, we propose a two‐step, less‐volatile value‐at‐risk (LVaR) estimation using a generalized nearly isotonic regression (GNIR) model. In the proposed approach, a VaR sequence is first produced under the generalized autoregressive conditional heteroskedasticity (GARCH) framework. Then, the VaR sequence is adjusted by GNIR, and the generated estimate is denoted as LVaR. The results of an empirical investigation show that LVaR outperformed other VaR estimates under the classic equally weighted and exponentially weighted moving‐average frameworks. Furthermore, we show not only that LVaR is less volatile, but also that it performed reasonably well in various backtests.
Funder
Ministry of Science and Technology, Taiwan
Reference33 articles.
1. A dynamic ensemble learning algorithm for neural networks
2. Barone‐Adesi G. K.Giannopoulos andL.Vosper 2000 Filtering historical simulation Backtest analysis Mimeo Universit'a della Svizzera Italiana City University Business School Westminster Business School and London Clearing House.