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Portfolio Risk Evaluation: An Approach Based on Dynamic Conditional Correlations Models and Wavelet Multi-Resolution Analysis

机译:投资组合风险评估:一种基于动态条件相关模型和小波多分辨分析的方法

摘要

We analyzed the volatility dynamics of three developed markets (U.K., U.S. and Japan), during the period 2003-2011, by comparing the performance of several multivariate volatility models, namely Constant Conditional Correlation (CCC), Dynamic Conditional Correlation (DCC) and consistent DCC (cDCC) models. To evaluate the performance of models we used four statistical loss functions on the daily Value-at-Risk (VaR) estimates of a diversified portfolio in three stock indices: FTSE 100, S&P 500 and Nikkei 225. We based on one-day ahead conditional variance forecasts. To assess the performance of the abovementioned models and to measure risks over different time-scales, we proposed a wavelet-based approach which decomposes a given time series on different time horizons. Wavelet multiresolution analysis and multivariate conditional volatility models are combined for volatility forecasting to measure the comovement between stock market returns and to estimate daily VaR in the time-frequency space. Empirical results shows that the asymmetric cDCC model of Aielli (2008) is the most preferable according to statistical loss functions under raw data. The results also suggest that wavelet-based models increase predictive performance of financial forecasting in low scales according to number of violations and failure probabilities for VaR models.
机译:我们通过比较多个多元波动率模型(即恒定条件相关(CCC),动态条件相关(DCC)和一致)的性能,分析了三个发达市场(英国,美国和日本)在2003-2011年期间的波动动态。 DCC(cDCC)模型。为了评估模型的性能,我们在三种股票指数(FTSE 100,S&P 500和Nikkei 225)的多元化投资组合的每日风险价值(VaR)估计中使用了四个统计损失函数。我们基于一天的提前条件方差预测。为了评估上述模型的性能并测量不同时间范围内的风险,我们提出了一种基于小波的方法,该方法分解了不同时间范围内的给定时间序列。小波多分辨率分析和多元条件波动率模型相结合,用于波动率预测,以测量股市收益之间的联动,并估计时频空间中的每日VaR。实证结果表明,根据原始数据下的统计损失函数,Aielli(2008)的不对称cDCC模型是最可取的。结果还表明,基于小波的模型可以根据VaR模型的违规次数和失败概率在小范围内提高财务预测的预测性能。

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  • 作者

    Khalfaoui R.; Boutahar M.;

  • 作者单位
  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 en
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