Some statistical aspects of methods for detection of turning points in business cycles
Sammanfattning
Methods for on-line turning point detection in business cycles are discussed. The statistical properties of three likelihood based methods are compared. One is based on a Hidden Markov Model, another includes a non-parametric estimation procedure and the third combines features of the other two. The methods are illustrated by monitoring a period of the Swedish industrial production. Evaluation measures that reflect timeliness are used. The effects of smoothing, seasonal variation, autoregression and multivariate issues on methods for timely detection are discussed
Universitet
Göteborg University. School of Business, Economics and Law
Institution
Department of Economics ; Institutionen för nationalekonomi med statistik
Utgivare
Taylor & Francis
Elektronisk version
http://dx.doi.org/10.1080/02664760500445517
Tidskriftstitel
Journal of Applied Statistics
Volym
33
Häftesnummer
3
Startsida
257
Slutsida
278
Samlingar
Fil(er)
Datum
2006Författare
Andersson, Eva
Bock, David
Frisén, Marianne
Nyckelord
Monitoring
surveillance
early warning system
regime switching
Publikationstyp
article, peer reviewed scientific
Språk
eng