We consider a system of m general
linear models, where the system error vector has a
singular covariance matrix owing to various “adding
up” requirements and, in addition, the error vector
obeys an autoregressive scheme. The paper
reformulates the problem considered earlier by
Berndt and Savin [8] (BS), as well as others before
them; the solution, thus obtained, is far simpler,
being the natural extension of a restricted
least-squares-like procedure to a system of
equations. This reformulation enables us
to treat all parameters
symmetrically, and discloses a set of
conditions which is different from, and much less
stringent than, that exhibited in the framework
provided by BS.
Finally, various extensions are discussed to (a) the
case where the errors obey a stable autoregression
scheme of order r; (b) the case
where the errors obey a moving average scheme of
order r; (c) the case of “dynamic”
vector distributed lag models, that is, the case
where the model is formulated as autoregressive (in
the dependent variables), and moving average (in the
explanatory variables), and the errors are specified
to be i.i.d.