Microstructure noise contaminates high-frequency estimates of asset price volatility. Recent work has determined a preferred sampling frequency under the assumption that the properties of noise are constant. Given the sampling frequency, the high-frequency observations are given equal weight. While convenient, constant weights are not necessarily efficient. We use the Kalman filter to derive more efficient weights, for any given sampling frequency. We demonstrate the efficacy of the procedure through an extensive simulation exercise, showing that our filter compares favorably to more traditional methods
We analyze the impact of time series dependence in market microstructure noise on the properties of ...
It is common practice to use the sum of frequently sampled squared returns to estimate volatility, y...
With the availability of high-frequency data ex post daily (or lower frequency) nonparametric volati...
Using high frequency data for the price dynamics of equities we measure the impact that market micr...
Using high frequency data for the price dynamics of equities we measure the impact that market micro...
As a basic principle in statistics, a larger sample size is preferred whenever possible. Nonetheless...
We define a new estimator of the volatility of volatility process based only on a pre-estimation of ...
The basic model for high-frequency data in finance is considered, where an efficient price process i...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
It is a common practice in finance to estimate volatility from the sum of frequently sampled squared...
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...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
We analyze the impact of time series dependence in market microstructure noise on the properties of...
In this paper, we develop econometric tools to analyze the integrated volatility (IV) of the efficie...
We analyze the impact of time series dependence in market microstructure noise on the properties of ...
It is common practice to use the sum of frequently sampled squared returns to estimate volatility, y...
With the availability of high-frequency data ex post daily (or lower frequency) nonparametric volati...
Using high frequency data for the price dynamics of equities we measure the impact that market micr...
Using high frequency data for the price dynamics of equities we measure the impact that market micro...
As a basic principle in statistics, a larger sample size is preferred whenever possible. Nonetheless...
We define a new estimator of the volatility of volatility process based only on a pre-estimation of ...
The basic model for high-frequency data in finance is considered, where an efficient price process i...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
It is a common practice in finance to estimate volatility from the sum of frequently sampled squared...
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...
Transaction prices of financial assets are contaminated by market microstructure effects. This is pa...
We analyze the impact of time series dependence in market microstructure noise on the properties of...
In this paper, we develop econometric tools to analyze the integrated volatility (IV) of the efficie...
We analyze the impact of time series dependence in market microstructure noise on the properties of ...
It is common practice to use the sum of frequently sampled squared returns to estimate volatility, y...
With the availability of high-frequency data ex post daily (or lower frequency) nonparametric volati...