We propose a general form of vector Multiplicative Error Model (MEM) for the dynamics of duration, volume and price volatility. The vector MEM relaxes the two restrictions often imposed by previous empirical work in market microstructure research, by allowing interdependence among the variables and relaxing weak exogeneity restrictions. We further propose a multivariate lognormal distribution for the vector MEM. The model is applied to the trade and quote data from the New York Stock Exchange (NYSE). The empirical results show that the vector MEM captures the dynamics of the trivariate system successfully. We find that times of greater activity or trades with larger size coincide with a higher number of informed traders present in the marke...
We propose a novel approach to modelling and forecasting high frequency trading volumes. The new mod...
The main goal of this paper is to gain insights into the dependence structure between the duration a...
In this paper we analyze and interpret the quote price dynamics of 100 NYSE stocks with varying aver...
We propose a general form of vector Multiplicative Error Model (MEM) for the dynamics of duration, v...
We develop a general form logarithmic vector multiplicative error model (log-vMEM). The log-vMEM imp...
In this paper we motivate, specify and estimate a model in which the intra-day volatilty process aff...
Econometrics of high frequency data and nonnegative valued financial point process is addressed in a...
In this paper, we study the dynamic interdependencies between high-frequency volatility, liquidity d...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
We explore the role of trade volume, trade direction, and the duration between trades in explaining ...
Empirical market microstructure literature widely employs the non-linear and non-Gaussian Multiplica...
This paper develops an approach for modeling the interdependence of intra-day volatility and trade d...
We introduce a multivariate multiplicative error model which is driven by component- specific observ...
In financial time series analysis we encounter several instances of non–negative valued processes (v...
Market microstructure theory highlights two important empirical predictions about how financial asse...
We propose a novel approach to modelling and forecasting high frequency trading volumes. The new mod...
The main goal of this paper is to gain insights into the dependence structure between the duration a...
In this paper we analyze and interpret the quote price dynamics of 100 NYSE stocks with varying aver...
We propose a general form of vector Multiplicative Error Model (MEM) for the dynamics of duration, v...
We develop a general form logarithmic vector multiplicative error model (log-vMEM). The log-vMEM imp...
In this paper we motivate, specify and estimate a model in which the intra-day volatilty process aff...
Econometrics of high frequency data and nonnegative valued financial point process is addressed in a...
In this paper, we study the dynamic interdependencies between high-frequency volatility, liquidity d...
Multiplicative error models (MEM) became a standard tool for modeling conditional durations of intra...
We explore the role of trade volume, trade direction, and the duration between trades in explaining ...
Empirical market microstructure literature widely employs the non-linear and non-Gaussian Multiplica...
This paper develops an approach for modeling the interdependence of intra-day volatility and trade d...
We introduce a multivariate multiplicative error model which is driven by component- specific observ...
In financial time series analysis we encounter several instances of non–negative valued processes (v...
Market microstructure theory highlights two important empirical predictions about how financial asse...
We propose a novel approach to modelling and forecasting high frequency trading volumes. The new mod...
The main goal of this paper is to gain insights into the dependence structure between the duration a...
In this paper we analyze and interpret the quote price dynamics of 100 NYSE stocks with varying aver...