Financial Time Series: Methods & Models
A special issue of Journal of Risk and Financial Management (ISSN 1911-8074). This special issue belongs to the section "Mathematics and Finance".
Deadline for manuscript submissions: closed (31 December 2019) | Viewed by 29796
Special Issue Editors
Interests: financial time series analysis; risk management; market risk; systemic risk; univariate and multivariate volatility models; quantitative portfolio allocation strategies; managed portfolios performance measurement; high-frequency data analysis and trading strategies; dynamic models for energy and weather applications
Special Issues, Collections and Topics in MDPI journals
Interests: time series econometrics; financial risk management; volatility modeling; time series analysis; time series; GARCH; time series forecasting
Special Issues, Collections and Topics in MDPI journals
Special Issue Information
Dear Colleagues,
In the last two decades, thanks to the progress in information technology, large (in the cross-section) and ultra-high-frequency financial datasets have become increasingly available to the academic community. The rich dependence structure of these data has stimulated the demand for more complex dynamic models along different research lines. On one side, the larger cross-sectional dimensions—which are easily accessible—pose challenges to the use of multivariate models, with the need of specifying appropriate estimation approaches and/or to impose data- and economically-driven parameter restrictions. On the other side, the data available at high frequency push for the development of data cleaning and data management tools as pre-requisites for time series analyses. More recently, data integration aspects have received attention, and financial time series data become a source of information for the estimation of financial networks within multidimensional time series models.
Currently, approaches that are even more flexible are needed to properly extract the relevant information from a rapidly growing amount of data, resorting, for instance, to statistical learning approaches or to functional methods.
In this perspective, the purpose of this Special Issue is to collect works that point at the development of state-of-the art methods or models which are appropriate for the analysis of financial data with a most prominent focus on the forecasting of tail risk measures.
Prof. Dr. Massimiliano CaporinProf. Dr. Giuseppe Storti
Guest Editors
Manuscript Submission Information
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Keywords
- Financial time series
- Point and density forecasts
- High frequency
- Large dimensional problems
- Dynamic risk and quantile models
- Realized measures
- Finance analytics
- Backtesting
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