Title of article :
Multivariate temporal disaggregation with cross-sectional constraints
Author/Authors :
Tommaso Proietti، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Multivariate temporal disaggregation deals with the historical reconstruction and nowcasting of economic
variables subject to temporal and contemporaneous aggregation constraints. The problem involves a system
of time series that are related not only by a dynamic model but also by accounting constraints. The paper
introduces two fundamental (and realistic) models that implement the multivariate best linear unbiased
estimation approach that has potential application to the temporal disaggregation of the national accounts
series. The multivariate regression model with random walk disturbances is most suitable to deal with
the chained linked volumes (as the nature of the national accounts time series suggests); however, in
this case the accounting constraints are not binding and the discrepancy has to be modeled by either a
trend-stationary or an integrated process. The tiny, compared with other driving disturbances, size of the
discrepancy prevents maximum-likelihood estimation to be carried out, and the parameters have to be
estimated separately. The multivariate disaggregation with integrated random walk disturbances is suitable
for the national accounts aggregates expressed at current prices, in which case the accounting constraints
are binding.
Keywords :
National Accounts , Best linear unbiased estimation , Kalman filter and smoother
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS