Modelling, estimation and visualization of multivariate dependence for high-frequency data
Book chapter, 2010

Dependence modelling and estimation is a key issue in the assessment of financial risk. It is common knowledge meanwhile that the multivariate normal model with linear correlation as its natural dependence measure is by no means an ideal model. We suggest a large class of models and a dependence function, which allows us to capture the complete extreme dependence structure of a portfolio. We also present a simple nonparametric estimation procedure of this function. To show our new method at work we apply it to a financial data set of high-frequency stock data and estimate the extreme dependence in the data. Among the results in the investigation we show that the extreme dependence is the same for different time scales. This is consistent with the result on high-frequency FX data reported in Hauksson et al. (2001). Hence, the different asset classes seem to share the same time scaling for extreme dependence. This time scaling property of high-frequency data is also explained from a theoretical point of view.

multivariate models

tail dependence function

multivariate extreme value statistics

extreme risk assessment

high-frequency data

Risk management

Author

Erik Brodin

University of Gothenburg

Chalmers, Mathematical Sciences, Mathematical Statistics

C. Klüppelberg

Center for Mathematical Sciences

Statistical Modelling and Regression Structures: Festschrift in Honour of Ludwig Fahrmeir

267-300
9783790824124 (ISBN)

Subject Categories

Mathematics

DOI

10.1007/978-3-7908-2413-1_15

ISBN

9783790824124

More information

Created

10/7/2017