David F. Hendry 23
thenxt=N−t^1
∑Nt
i= 1 xi,t∼IN
[
μt,Nt−^1 σt^2
]
. Log transforms of totals and means,
x>0, only differ by that population size as ln
∑Nt
i= 1 xi,t=lnxt+lnNt, so stan-
dard deviations of log aggregates are proportional to scaled standard deviations of
means:SD[ln
∑Nt
i= 1 xi,t]N
− 1
t σt/μt(see, e.g., Hendry, 1995a, Ch. 2). Thus logs
of aggregates can be well behaved, independently of the underlying individual
economic behavior.
Data transformations. Most econometric models also analyze data after transfor-
mations (such as logs, growth rates, etc.), written here asW^1 T=g(V^1 T). Again,
the key impact is onφT^1 →φT^1 and the consequences on the constancy of, and
cross-links between, the resulting parameters. At this stage we have created:
DW
(
W^1 T|U 0 ,QT^1 ,φ^1 T
)
. (1.2)
The functional form of the resulting representation is determined here by the
choice ofg(·). Many economic variables are intrinsically positive in levels, a prop-
erty imposed in models by taking logs, which also ensures that the error standard
deviation is proportional to the level.
Data partition. No reduction is involved in specifying thatWT^1 =(W^1 T :R^1 T),
whereR^1 Tdenotes then×Tdata to be analyzed andW
1
Tthe rest. However, this
decision is a fundamental one for the success of the modeling exercise, in that the
parameters of whatever process determinesR^1 Tmust deliver the objectives of the
analysis.
Marginalizing. To implement the choice ofRT^1 as the data under analysis neces-
sitates discarding all the other potential variables, which corresponds to the
statistical operation of marginalizing (1.2) with respect toW^1 T:
DW
(
W
1
T,R
1
T|U 0 ,Q
1
T,φ
1
T
)
=DW
(
W
1
T|R
1
T,U 0 ,Q
1
T,φ
1
T
)
DR
(
R^1 T|U 0 ,QT^1 ,ω^1 T
)
.
(1.3)
While such a conditional-marginal factorization is always possible, a viable
analysis requires no loss of information from just retainingω^1 T. That will occur
only if
(
φ^1 T,ωT^1
)
satisfy a cut, so their joint parameter space is the cross-product
of their individual spaces, precluding links across those parameters. At first sight,
such a condition may seem innocuous, but it is very far from being so: implic-
itly, it entails Granger non-causality of (all lagged values of)W^1 TinDR(·), which
is obviously a demanding requirement (see Granger, 1969; Hendry and Mizon,
1999). Spanos (1989) calls the marginal distributionDR(·)in (1.3) the Haavelmo
distribution.