Volatility clustering, with autocorrelations of the hyperbolic decay rate, is unquestionably one of the most important stylized facts of financial time series. This paper presents a market microstructure model, that is able to generate volatility clustering with hyperbolic autocorrelations through traders with multiple trading frequencies using Bayesian information updating in an incomplete market. The model illustrates that signal extraction, which is induced by multiple trading frequency, can increase the persistence of the volatility of returns. Furthermore, we show that the local temporal memory of the underlying time series of returns and their volatility varies greatly varies with the number of traders in the marketTrading frequency, ...
We measure the influence of different time-scales on the intraday dynamics of financial markets. Thi...
We develop a new method to find the number of volatility regimes in a nonstationary financial time s...
In this paper we discuss univariate and multivariate statistical properties of volatility with the a...
Volatility clustering, with autocorrelations of the hyperbolic decay rate, is unquestionably one of ...
Clustering volatility is shown to appear in a simple market model with noise trading simply because ...
This thesis consists of three essays that study three interdependent topics: microstructure foundati...
In this paper, we attempt to give an algorithmic explanation to volatility clustering, one of the mo...
Financial volatility obeys two well-established empirical properties: it is fat-tailed (power-law di...
Financial volatility obeys two fascinating empirical regularities that apply to various assets, on v...
The price clustering phenomenon manifesting itself as an increased occurrence of specific prices is ...
Summary. Time series of financial asset returns often exhibit the volatility clustering property: la...
This paper explores the relationship between strategic trading and the clustering of volatility comm...
Volatility is a key variable in the modeling of financial markets. The most striking feature of vola...
A simple asset pricing model with two types of adaptively learning traders, fundamentalists and tech...
Volatility clustering is a well-known stylized feature of financial asset returns. In this paper, we...
We measure the influence of different time-scales on the intraday dynamics of financial markets. Thi...
We develop a new method to find the number of volatility regimes in a nonstationary financial time s...
In this paper we discuss univariate and multivariate statistical properties of volatility with the a...
Volatility clustering, with autocorrelations of the hyperbolic decay rate, is unquestionably one of ...
Clustering volatility is shown to appear in a simple market model with noise trading simply because ...
This thesis consists of three essays that study three interdependent topics: microstructure foundati...
In this paper, we attempt to give an algorithmic explanation to volatility clustering, one of the mo...
Financial volatility obeys two well-established empirical properties: it is fat-tailed (power-law di...
Financial volatility obeys two fascinating empirical regularities that apply to various assets, on v...
The price clustering phenomenon manifesting itself as an increased occurrence of specific prices is ...
Summary. Time series of financial asset returns often exhibit the volatility clustering property: la...
This paper explores the relationship between strategic trading and the clustering of volatility comm...
Volatility is a key variable in the modeling of financial markets. The most striking feature of vola...
A simple asset pricing model with two types of adaptively learning traders, fundamentalists and tech...
Volatility clustering is a well-known stylized feature of financial asset returns. In this paper, we...
We measure the influence of different time-scales on the intraday dynamics of financial markets. Thi...
We develop a new method to find the number of volatility regimes in a nonstationary financial time s...
In this paper we discuss univariate and multivariate statistical properties of volatility with the a...