To analyze the intertemporal interaction between the stock and bond market returns, we assume that the conditional covariance matrix follows a multivariate GARCH process. We allow for asymmetric effects in conditional variances and covariances. Using daily data, we find strong evidence of conditional heteroskedasticity in the covariance between stock and bond market returns. The results indicate that not only variances, but also covariances respond asymmetrically to return shocks. Bad news in the stock and bond market is typically followed by a higher conditional covariance than good news. Cross asymmetries, that is, asymmetries followed from shocks of opposite signs, appear to be important as well. Covariances between stock and bond return...
We apply a multivariate asymmetric generalized dynamic conditional correlation GARCH model to daily ...
We propose a nonlinear time series model where both the conditional mean and the conditional varianc...
The authors propose a simplified multivariate GARCH (generalized autoregressive conditional heterosc...
To analyze the intertemporal interaction between the stock and bond market returns, we assume that t...
textabstractTo analyze the intertemporal interaction between the stock and bond market returns, we a...
We model the dynamic interaction between stock and bond returns using a multivariate model with leve...
Abstract: The univariate Generalised Autoregressive Conditional Heterscedasticity (GARCH) model has ...
We model the dynamic interaction between stock and bond returns using a multivariate model with leve...
We propose that covariance (rather than beta) asymmetry provides a superior framework for examining ...
The three most popular univariate conditional volatility models are the generalized autoregressive c...
This paper investigates the intertemporal interaction between returns on the S&P 500 index and the L...
markdownabstract__Abstract__ The three most popular univariate conditional volatility models are ...
markdownabstract__Abstract__ The three most popular univariate conditional volatility models are ...
The asymmetric moving average model (asMA) is extended to allow for asymmetric quadratic conditional...
The three most popular univariate conditional volatility models are the generalized autoregressive c...
We apply a multivariate asymmetric generalized dynamic conditional correlation GARCH model to daily ...
We propose a nonlinear time series model where both the conditional mean and the conditional varianc...
The authors propose a simplified multivariate GARCH (generalized autoregressive conditional heterosc...
To analyze the intertemporal interaction between the stock and bond market returns, we assume that t...
textabstractTo analyze the intertemporal interaction between the stock and bond market returns, we a...
We model the dynamic interaction between stock and bond returns using a multivariate model with leve...
Abstract: The univariate Generalised Autoregressive Conditional Heterscedasticity (GARCH) model has ...
We model the dynamic interaction between stock and bond returns using a multivariate model with leve...
We propose that covariance (rather than beta) asymmetry provides a superior framework for examining ...
The three most popular univariate conditional volatility models are the generalized autoregressive c...
This paper investigates the intertemporal interaction between returns on the S&P 500 index and the L...
markdownabstract__Abstract__ The three most popular univariate conditional volatility models are ...
markdownabstract__Abstract__ The three most popular univariate conditional volatility models are ...
The asymmetric moving average model (asMA) is extended to allow for asymmetric quadratic conditional...
The three most popular univariate conditional volatility models are the generalized autoregressive c...
We apply a multivariate asymmetric generalized dynamic conditional correlation GARCH model to daily ...
We propose a nonlinear time series model where both the conditional mean and the conditional varianc...
The authors propose a simplified multivariate GARCH (generalized autoregressive conditional heterosc...