Title: Time-Varying Quantiles
Authors: Harvey, Andrew C
De Rossi, Giuliano
Keywords: Dispersion
quantile regression
signal extraction
state space
stationarity tests
value at risk
Issue Date: Jul-2006
Publisher: Faculty of Economics, University of Cambridge, UK
Series/Report no.: CWPE;0649
Abstract: A time-varying quantile can be fitted to a sequence of observations by formulating a time series model for the corresponding population quantile and iteratively applying a suitably modified state space signal extraction algorithm. Quantiles estimated in this way provide information on various aspects of a time series, including dispersion, asymmetry and, for financial applications, value at risk. Tests for the constancy of quantiles, and associated contrasts, are constructed using indicator variables; these tests have a similar form to stationarity tests and, under the null hypothesis, their asymptotic distributions belong to the Cramér von Mises family. Estimates of the quantiles at the end of the series provide the basis for forecasting. As such they offer an alternative to conditional quantile autoregressions and, at the same time, give some insight into their structure and potential drawbacks.
URI: http://www.dspace.cam.ac.uk/handle/1810/183636
Appears in Collections:Cambridge Working Papers in Economics

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