This paper proposes a new dynamic model of realized covariance (RCOV) matrices based on recent work in time-varying Wishart distributions. The specifications can be linked to returns for a joint multivariate model of returns and covariance dynamics that is both easy to estimate and forecast. Realized covariance matrices are constructed for 5 stocks using high-frequency intraday prices based on positive semi-definite realized kernel estimates. We extend the model to capture the strong persistence properties in RCOV. Out-of-sample performance based on statistical and economic metrics show the importance of this. We discuss which features of the model are necessary to provide improvements over a traditional multivariate GARCH model that only u...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
We propose flexible models for multivariate realized volatility dynamics which involve generalizatio...
A realized covariance model specifies a dynamic process for a conditional covariance matrix of daily...
This paper introduces several new Bayesian nonparametric models suitable for capturing the unknown c...
This thesis studies the modeling of realized covariance (RCOV) matrices. A new type of parametric m...
New dynamic models for realized covariance matrices are proposed. The expected value of the realized...
The increasing availability of high-quality transaction data across many financial assets, allow the...
The covariance matrix of asset returns, which describes the fluctuation of asset prices, plays a cru...
We propose a Conditional Autoregressive Wishart (CAW) model for the analysis of realized covariance ...
Time series of realized covariance matrices can be modeled in the conditional autoregressive Wishart...
Session EO046: New developments in time series analysis (EO0370 - Wai-Keung Li - presenting)Realized...
In this thesis, we use observation-driven models for time-series of daily RCs. That is, we assume a ...
Most pricing and hedging models rely on the long-run temporal stability of a sample covariance matri...
This paper introduces a new factor structure suitable for modeling large realized covariance matrice...
Although stochastic volatility and GARCH (generalized autoregressive conditional heteroscedasticity)...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
We propose flexible models for multivariate realized volatility dynamics which involve generalizatio...
A realized covariance model specifies a dynamic process for a conditional covariance matrix of daily...
This paper introduces several new Bayesian nonparametric models suitable for capturing the unknown c...
This thesis studies the modeling of realized covariance (RCOV) matrices. A new type of parametric m...
New dynamic models for realized covariance matrices are proposed. The expected value of the realized...
The increasing availability of high-quality transaction data across many financial assets, allow the...
The covariance matrix of asset returns, which describes the fluctuation of asset prices, plays a cru...
We propose a Conditional Autoregressive Wishart (CAW) model for the analysis of realized covariance ...
Time series of realized covariance matrices can be modeled in the conditional autoregressive Wishart...
Session EO046: New developments in time series analysis (EO0370 - Wai-Keung Li - presenting)Realized...
In this thesis, we use observation-driven models for time-series of daily RCs. That is, we assume a ...
Most pricing and hedging models rely on the long-run temporal stability of a sample covariance matri...
This paper introduces a new factor structure suitable for modeling large realized covariance matrice...
Although stochastic volatility and GARCH (generalized autoregressive conditional heteroscedasticity)...
Modelling and forecasting high dimensional covariance matrices is a key challenge in data-richenviro...
We propose flexible models for multivariate realized volatility dynamics which involve generalizatio...
A realized covariance model specifies a dynamic process for a conditional covariance matrix of daily...