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基于贝叶斯CAViaR模型的油价风险研究
引用本文:陈磊,杜化宇,曾勇.基于贝叶斯CAViaR模型的油价风险研究[J].系统工程理论与实践,2013,33(11):2757-2765.
作者姓名:陈磊  杜化宇  曾勇
作者单位:1. 电子科技大学 经济与管理学院, 成都 610054;2. 闽江学院 新华都商学院, 福州 350108
基金项目:国家自然科学基金(71301019,71202074);教育部人文社会科学基金(08JA790012)
摘    要:CAViaR模型是常用的VaR估计方法之一, 但通常面临参数估计和模型检验的困难. 本文发展了贝叶斯CAViaR模型用于分析油价风险, 并考察该模型在参数估计、模型选择、VaR预测等方面的作用. 采用布伦特原油价格日数据, 研究显示贝叶斯CAViaR模型有效控制了估计风险和模型风险, 且具有较好的VaR预测绩效, 优于传统CAViaR模型. 本文同时指出, 油价VaR存在自回归特征并受前期正负收益率的不对称影响. 不对称斜率CAViaR模型有效刻画了油价VaR的动态变化模式.

关 键 词:贝叶斯CAViaR模型  油价风险  风险值  贝叶斯方法  MCMC  
收稿时间:2011-10-09

Analysis of oil price value at risk using Bayesian CAViaR model
CHEN Lei,Anthony H. TU,ZENG Yong.Analysis of oil price value at risk using Bayesian CAViaR model[J].Systems Engineering —Theory & Practice,2013,33(11):2757-2765.
Authors:CHEN Lei  Anthony H TU  ZENG Yong
Institution:1. School of Management and Economics, University of Electronic Science and Technology of China, Chengdu 610054, China;2. New Huadu Business School, Minjiang University, Fuzhou 350108, China
Abstract:CAViaR model is usually used to estimate value at risk (VaR). However, it is difficult to estimate parameters and check model specification for CAViaR model. This paper develops Bayesian CAViaR model, adopts this model to estimate oil price VaR, and analyzes the roles of Bayesian CAViaR model in parameter estimation, model selection and VaR forecast. Using daily data of Brent crude oil price, the results show Bayesian CAViaR model can control estimation risk and model risk effectively, and has the better forecast performance than traditional CAViaR model. This paper also indicates oil price VaR has autoregressive effects and is affected by prior returns. The positive and negative returns have asymmetry effects on VaR. Asymmetric slope CAViaR model is the best model to describe the dynamics of oil price VaR.
Keywords:Bayesian CAViaR model  oil price risk  value at risk  Bayesian method  MCMC  
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