We study market microstructure noise in high-frequency data and analyze its implications for the real-ized variance (RV) under a general specification for the noise. We show that kernel-based estimators can unearth important characteristics of market microstructure noise and that a simple kernel-based estimator dominates the RV for the estimation of integrated variance (IV). An empirical analysis of the Dow Jones Industrial Average stocks reveals that market microstructure noise is time-dependent and correlated with increments in the efficient price. This has important implications for volatility estimation based on high-frequency data. Finally, we apply cointegration techniques to decompose transaction prices and bid–ask quotes into an est...
We derive a shrinkage-type realized kernels estimator of the integrated volatility within a semi-par...
As a basic principle in statistics, a larger sample size is preferred whenever possible. Nonetheless...
We introduce a new nonparametric method to measure microstructure noise, the deviation of the observ...
We study market microstructure noise in high-frequency data and analyze its implications for the rea...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
In this paper, we develop econometric tools to analyze the integrated volatility (IV) of the efficie...
In this paper, we develop econometric tools to analyze the integrated volatility (IV) of the efficie...
This thesis introduces new econometric tools to analyse high-frequency financial data emerged from h...
The sum of squared returns, or realized volatility, of the recently available high frequency financi...
Preliminary and incomplete It is a well accepted fact that stock returns data are often contaminated...
This paper studies the joint distribution of tick by tick returns and durations between trades. Retu...
Recorded prices are known to diverge from their “efficient ” values due to the presence of market mi...
Using recent advances in the econometrics literature, we disentangle from high frequency observation...
We derive a shrinkage-type realized kernels estimator of the integrated volatility within a semi-par...
As a basic principle in statistics, a larger sample size is preferred whenever possible. Nonetheless...
We introduce a new nonparametric method to measure microstructure noise, the deviation of the observ...
We study market microstructure noise in high-frequency data and analyze its implications for the rea...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
In this paper, we develop econometric tools to analyze the integrated volatility (IV) of the efficie...
In this paper, we develop econometric tools to analyze the integrated volatility (IV) of the efficie...
This thesis introduces new econometric tools to analyse high-frequency financial data emerged from h...
The sum of squared returns, or realized volatility, of the recently available high frequency financi...
Preliminary and incomplete It is a well accepted fact that stock returns data are often contaminated...
This paper studies the joint distribution of tick by tick returns and durations between trades. Retu...
Recorded prices are known to diverge from their “efficient ” values due to the presence of market mi...
Using recent advances in the econometrics literature, we disentangle from high frequency observation...
We derive a shrinkage-type realized kernels estimator of the integrated volatility within a semi-par...
As a basic principle in statistics, a larger sample size is preferred whenever possible. Nonetheless...
We introduce a new nonparametric method to measure microstructure noise, the deviation of the observ...