Model-based measurement of latent risk in time series with applications.

Author(s)
Bijleveld, F.D. Commandeur, J.J.F. Gould, P. & Koopman, S.J.
Year
Abstract

Risk is at the centre of many policy decisions in companies, governments and other institutions.The risk of road fatalities concerns local governments in planning countermeasures, the risk and severity of counterparty default concerns bank risk managers daily and the risk of infection has actuarial and epidemiological consequences. However, risk cannot be observed directly and it usually varies over time.We introduce a general multivariate time series model for the analysis of risk based on latent processes for the exposure to an event, the risk of that event occurring and the severity of the event. Linear state space methods can be used for the statistical treatment of the model. The new framework is illustrated for time series of insurance claims, credit card purchases and road safety. It is shown that the general methodology can be effectively used in the assessment of risk. (Author/publisher)

Publication

Library number
20081165 ST [electronic version only]
Source

Journal of the Royal Statistical Society Series A - Statistics in Society, Vol. 171 (2005), Part 1 (January), p. 265-277, 19 ref.

SWOV publication

This is a publication by SWOV, or that SWOV has contributed to.