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A STABLE COINTEGRATED VAR MODEL FOR CREDIT RETURNS WITH TIME-VARYING VOLATILITY

机译:具有时变波动的信贷返回稳定的协整VAR模型

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In order to forecast the daily returns for corporate bonds with a given credit quality (credit rating) and a given maturity, we set up a framework based on cointegrated vector-autoregression. We assume the variables of the model to follow a stable law as they exhibit peakedness and heavy-tailedness. For the residuals, we observe time-varying volatilities (volatility clustering). When dealing with Value-at-Risk (VaR) applications, the forecast of conditional volatility and covariance is crucial. Therefore, aside from unconditional stable modeling of the dependent residuals, we examine two different volatility models for these, we compare the predictive accuracy of the multivariate stable GARCH(1, 1) with the constant correlation matrix and the stable Exponentially Weighted Moving Average (EWMA) model.
机译:为了预测具有给定信用质量(信用评级)和给定成熟度的公司债券的每日回报,我们建立了一个基于共同组成的传染媒介自我的框架。我们假设模型的变量遵循稳定的法律,因为它们表现出尖锐和重尾。对于残差,我们观察时间不同的波动率(波动性聚类)。处理价值 - 风险(VAR)应用时,条件波动和协方差预测至关重要。除了从无条件的稳定模型外,我们检查了两种不同的波动模型,我们将多元稳定GARCH(1,1)的预测精度与恒定的相关矩阵和稳定的指数加权移动平均线(EWMA ) 模型。

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