Structural time series models and the Kalman filter: A concise review
Data(s) |
13/03/2014
13/03/2014
01/06/2009
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Resumo |
The continued increase in availability of economic data in recent years and, more importantly, the possibility to construct larger frequency time series, have fostered the use (and development) of statistical and econometric techniques to treat them more accurately. This paper presents an exposition of structural time series models by which a time series can be decomposed as the sum of a trend, seasonal and irregular components. In addition to a detailled analysis of univariate speci fications we also address the SUTSE multivariate case and the issue of cointegration. Finally, the recursive estimation and smoothing by means of the Kalman filter algorithm is described taking into account its different stages, from initialisation to parameter s estimation. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Nova SBE |
Relação |
Nova School of Business and Economics Working Paper Series;541 |
Direitos |
openAccess |
Palavras-Chave | #SUTSE #Cointegration #ARIMA #Smoothing #Likelihood |
Tipo |
other |