Abstract. In time series problems, noise can be divided into two categories: dynamic noise which drives the process, and observational noise which is added in the measurement process, but does not influence future values of the system. In this framework, empirical volatilities (the squared relative returns of prices) exhibit a significant amount of observational noise. To model and predict their time evolution adequately, we estimate state space models that explicitly include observational noise. We obtain relaxation times for shocks in the logarithm of volatility ranging from three weeks (for foreign exchange) to three to five months (for stock indices). In most cases, a two-dimensional hidden state is required to yield residuals that are ...
It is a common practice in finance to estimate volatility from the sum of frequently sampled squared...
We study the mean escape time in a market model with stochastic volatility. The process followed by ...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
In time series problems, noise can be divided into two categories: dynamic noise which drives the pr...
We briefly review the statistical properties of the escape times, or hitting times, for stock price ...
We study a generalization of the Heston model, which consists of two coupled stochastic differential...
This work is devoted to the study of modeling high frequency time series including extreme fluctuati...
This work is devoted to the study of modeling high frequency time series including extreme fluctuati...
In this paper we model the Gaussian errors in the standard Gaussian linear state space model as stoc...
This study applies the BDS test to identify whether financial market data are driven by chaos theory...
Stochastic volatility models are able to reproduce many empirical regularities in financial time-ser...
A central problem of Quantitative Finance is that of formulating a probabilistic model of the time e...
A central problem of Quantitative Finance is that of formulating a probabilistic model of the time e...
This paper studies some temporal dependence properties and addresses the issue of parametric estimat...
Two types of statistical models are empirically applied to test the pattern of volatility in the exc...
It is a common practice in finance to estimate volatility from the sum of frequently sampled squared...
We study the mean escape time in a market model with stochastic volatility. The process followed by ...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
In time series problems, noise can be divided into two categories: dynamic noise which drives the pr...
We briefly review the statistical properties of the escape times, or hitting times, for stock price ...
We study a generalization of the Heston model, which consists of two coupled stochastic differential...
This work is devoted to the study of modeling high frequency time series including extreme fluctuati...
This work is devoted to the study of modeling high frequency time series including extreme fluctuati...
In this paper we model the Gaussian errors in the standard Gaussian linear state space model as stoc...
This study applies the BDS test to identify whether financial market data are driven by chaos theory...
Stochastic volatility models are able to reproduce many empirical regularities in financial time-ser...
A central problem of Quantitative Finance is that of formulating a probabilistic model of the time e...
A central problem of Quantitative Finance is that of formulating a probabilistic model of the time e...
This paper studies some temporal dependence properties and addresses the issue of parametric estimat...
Two types of statistical models are empirically applied to test the pattern of volatility in the exc...
It is a common practice in finance to estimate volatility from the sum of frequently sampled squared...
We study the mean escape time in a market model with stochastic volatility. The process followed by ...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...