We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequency trading variables revealing time-varying conditional variances and correlations. Modeling the variables’ conditional mean processes using a multiplicative error model we map the resulting residuals into a Gaussian domain using a Gaussian copula. Based on high-frequency volatility, cumulative trading volumes, trade counts and market depth of various stocks traded at the NYSE, we show that the proposed copula-based transformation is supported by the data and allows disentangling (multivariate) dynamics in higher order moments. To capture the latter, we propose a DCC-GARCH specification. We suggest estimating the model by composite maximum lik...
We introduce a multivariate multiplicative error model which is driven by componentspecific observat...
In this paper the dynamics of a joint transaction process are investigated. The transaction process ...
In this paper, we develop the theoretical and empirical properties of a new class of multi-variate G...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
This chapter introduces a flexible copula-based multivariate distributional specification that allow...
This chapter introduces a flexible copula-based multivariate distributional specification that allow...
This paper examines the time-varying dependence structure of commodity futures portfolios based on m...
Research projects in the area of multivariate financial time-series are of a particular interest for...
This paper proposes a multivariate copula-based volatility model for estimating value-at-Risk in ban...
This is an electronic version of the paper presented at the Annual Conference on Neural Information ...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
We introduce a multivariate multiplicative error model which is driven by componentspecific observat...
In this paper the dynamics of a joint transaction process are investigated. The transaction process ...
In this paper, we develop the theoretical and empirical properties of a new class of multi-variate G...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
This chapter introduces a flexible copula-based multivariate distributional specification that allow...
This chapter introduces a flexible copula-based multivariate distributional specification that allow...
This paper examines the time-varying dependence structure of commodity futures portfolios based on m...
Research projects in the area of multivariate financial time-series are of a particular interest for...
This paper proposes a multivariate copula-based volatility model for estimating value-at-Risk in ban...
This is an electronic version of the paper presented at the Annual Conference on Neural Information ...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
We introduce a multivariate multiplicative error model which is driven by componentspecific observat...
In this paper the dynamics of a joint transaction process are investigated. The transaction process ...
In this paper, we develop the theoretical and empirical properties of a new class of multi-variate G...