Evaluations of likelihood based surveillance of volatility
Abstract
The volatility of asset returns are important in finance. Different likelihood based methods of statistical surveillance for detecting a change in the variance are evaluated. The differences are how the partial likelihood ratios are weighted. The full likelihood ratio, Shiryaev-Roberts, Shewhart and the CUSUM methods are derived in case of an independent and identically distributed Gaussian process. The behavior of the methods is studied both when there is no change and when the change occurs at different time points. The false alarms are controlled by the median run length. Differences and limiting equalities of the methods are shown. The performances when the process parameters for which the methods are optimized for differ from the true values of the parameters are evaluated. The methods are illustrated on a period of Standard and Poor’s 500 stock market index.
University
Göteborg University
Institution
Statistical Research Unit, Department of Economics
Collections
View/ Open
Date
2007-12-13Author
Bock, David
Keywords
surveillance
statistical process control
monitoring
likelihood ratio
Shewhart
CUSUM
Publication type
report
ISSN
0349-8034
Series/Report no.
2007:9
Language
eng