实现了数量扩展条件自回归风险值模型

IF 0.3 4区 经济学 Q4 BUSINESS, FINANCE Journal of Risk Pub Date : 2023-01-01 DOI:10.21314/jor.2023.010
Pit Götz
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引用次数: 0

摘要

本文基于改进的风险值(VaR)和改进的风险值与预期缺口(ES)联合预测的条件自回归分位数模型框架,引入了包含已实现方差、已实现半方差、跳跃方差和跳跃半方差的分位数模型,用。VaR表示;ES /。实证结果表明,基于高频数据的实现量导致更好的VaR和。VaR;ES /预测。我们使用VaR的条件覆盖和动态分位数回测,VaR的回归回测;ES/和基于评分函数和模型置信集的比较测试。该研究包括涵盖2007 - 2009年全球金融危机和2019冠状病毒病大流行的数据集,以确保在不同市场条件下的稳定性。结果表明,在所有分位数水平和时间段的经典检验和比较检验中,已实现的数量扩展改善了预测,其中独立VaR预测受益最大。结果表明,对称绝对值分位数模型从实现的半方差扩展中获益最大,而非对称斜率模型从实现的方差扩展中获益最大。
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Realized quantity extended conditional autoregressive value-at-risk models
This paper introduces quantile models that incorporate realized variance, realized semivariance, jump variation and jump semivariation based on a conditional autoregressive quantile regression model framework for improved value-at-risk (VaR) and improved joint forecasts of VaR and expected shortfall (ES), which we denote by .VaR; ES/. Our empirical results show that high-frequency-data-based realized quantities lead to better VaR and .VaR; ES/ forecasts. We evaluate these using conditional coverage and dynamic quantile backtests for VaR, regression-based backtests for .VaR; ES/ and comparison tests based on scoring functions and model confidence sets. The study includes data sets covering the global financial crisis of 2007–9 and the Covid-19 pandemic to ensure stability over different market conditions. The results indicate that realized quantity extensions improve forecasts in terms of classic and comparison tests for all quantile levels and time periods, with stand-alone VaR forecasts benefiting the most. It is shown that the symmetric absolute value quantile model benefits the most from realized semivariance extension, whereas the asymmetric slope model benefits the most from realized variance extension.
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来源期刊
Journal of Risk
Journal of Risk BUSINESS, FINANCE-
CiteScore
1.00
自引率
14.30%
发文量
10
期刊介绍: This international peer-reviewed journal publishes a broad range of original research papers which aim to further develop understanding of financial risk management. As the only publication devoted exclusively to theoretical and empirical studies in financial risk management, The Journal of Risk promotes far-reaching research on the latest innovations in this field, with particular focus on the measurement, management and analysis of financial risk. The Journal of Risk is particularly interested in papers on the following topics: Risk management regulations and their implications, Risk capital allocation and risk budgeting, Efficient evaluation of risk measures under increasingly complex and realistic model assumptions, Impact of risk measurement on portfolio allocation, Theoretical development of alternative risk measures, Hedging (linear and non-linear) under alternative risk measures, Financial market model risk, Estimation of volatility and unanticipated jumps, Capital allocation.
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