INTRODUCTION TO ECONOMETRICS II ECO 306 NOUN 113 where
(
)
(X )
(
)
iiXXfVar X
. Now, if
X and
uare independently distributed,
[ (
)(
)]
iiE f Xuu
may be
decomposed as the product of [ (x )]
iE fand
[(
)]
iE uu
. Hence
[ (X )(
)]
iiE fuu
=
[ XX 0
iiiE fE uuE f
…[4.04] since by assumption )
iE uis 0 in each observation. This implies,of course, that )
E uis also 0. Hence, when we take the expectation of
∑
(
)(
̅), each term within the summation has expected value 0. Thus the error term as a whole has expected value 0 and
b2
is an unbiased estimator of 4.1.3.3 Consistency Generally stated,
( ) is equal to ( ) ( ) where
A and
B are any two stochastic quantities,
on condition that both ( ) and ( ) exist and that
( ) is nonzero ( is the limiting value as the sample size becomes large. As also stated, sample expressions tend to their population counterparts as
the sample size becomes large, so
( ) is the population covariance of
X and
u and
( ) is
, the population variance of
X. If
X and
u are
independent, the population covariance of
X and
u is 0 and we can write that
( )
( )
…[4.05]
Share with your friends: