Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the ability to explain the nature of the data generating process. A process equation that successfully explains daily price changes, for example, is unable to characterize the nature of hourly price changes. On the other hand, statistical properties of monthly price changes are often not fully covered by a model based on daily price changes. In this paper, we simultaneously model regimes of volatilities at multiple time scales through wavelet-domain hidden Markov models. We establish an important stylized property of volatility across different time scales. We call this property asymmetric vertical dependence. It is asymmetric in the sense...
Volatility characterizes the amplitude of price return fluctuations. It is a central magnitude in fi...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
The paper studies the impact of different time-scales on the market risk of individual stock market ...
This thesis is concerned with the modeling of financial time series data. It introduces to the econ...
In this paper, we investigate the scaling properties of foreign exchange volatility. Our methodology...
The diversity of agents in a heterogeneous market makes volatilities of different ime resolutions be...
This paper provides new empirical evidence for intraday scaling behavior of stock market returns uti...
AbstractThe gain or loss of an investment can be defined by the movement of the market. This movemen...
We develop a Markov-Switching Autoregressive Conditional Intensity model for high-frequency volatili...
We measure the influence of different time-scales on the intraday dynamics of financial markets. Thi...
This thesis consists of three essays that study three interdependent topics: microstructure foundati...
Volatility characterizes the amplitude of price return fluctuations. It is a central magnitude in fi...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
The paper studies the impact of different time-scales on the market risk of individual stock market ...
This thesis is concerned with the modeling of financial time series data. It introduces to the econ...
In this paper, we investigate the scaling properties of foreign exchange volatility. Our methodology...
The diversity of agents in a heterogeneous market makes volatilities of different ime resolutions be...
This paper provides new empirical evidence for intraday scaling behavior of stock market returns uti...
AbstractThe gain or loss of an investment can be defined by the movement of the market. This movemen...
We develop a Markov-Switching Autoregressive Conditional Intensity model for high-frequency volatili...
We measure the influence of different time-scales on the intraday dynamics of financial markets. Thi...
This thesis consists of three essays that study three interdependent topics: microstructure foundati...
Volatility characterizes the amplitude of price return fluctuations. It is a central magnitude in fi...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...