分位数
计量经济学
风险价值
自回归模型
马尔科夫蒙特卡洛
分位数回归
贝叶斯概率
马尔可夫链
预期短缺
计算机科学
重要性抽样
蒙特卡罗方法
数学
财务
统计
经济
风险管理
作者
Richard Gerlach,Cathy W. S. Chen,Nancy Y. C. Chan
标识
DOI:10.1198/jbes.2010.08203
摘要
Recently, advances in time-varying quantile modeling have proven effective in financial Value-at-Risk forecasting. Some well-known dynamic conditional autoregressive quantile models are generalized to a fully nonlinear family. The Bayesian solution to the general quantile regression problem, via the Skewed-Laplace distribution, is adapted and designed for parameter estimation in this model family via an adaptive Markov chain Monte Carlo sampling scheme. A simulation study illustrates favorable precision in estimation, compared to the standard numerical optimization method. The proposed model family is clearly favored in an empirical study of 10 major stock markets. The results that show the proposed model is more accurate at Value-at-Risk forecasting over a two-year period, when compared to a range of existing alternative models and methods.
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