Slutsky's theorem concerns the convergence in distribution of the transformation of two sequences of random vectors, one converging in distribution and the other converging in probability to a constant.
Slutsky's theorem is based on the fact that if a sequence of random vectors converges in distribution and another sequence converges in probability to a constant, then they are jointly convergent in distribution.
Proposition (Joint
convergence)
Let
and
be two sequences of random vectors. If
and
,
where
is a constant,
then
See van der Vaart (2000).
In the proposition above we have indicated
convergence in
probability by
and convergence in distribution by
.
We provide a statement of Slutsky's theorem that is slightly more general than the statement usually found in standard references.
Proposition (Slutsky)
Let
and
be two sequences of random vectors such that
and
,
where
is a constant. Let
be a continuous function.
Then,
The couple
is jointly convergent in distribution to
by the proposition above (Joint convergence). Therefore, by the
Continuous Mapping
theorem, the fact that
is continuous implies that
converges in distribution to
.
The theorem is valid also when
and
are sequences of random matrices
(the reason being that random matrices can be thought of as random vectors
whose entries have been re-arranged into several columns).
Since the sum and the product are continuous functions of their operands,
Slutsky's theorem implies
thatwhen
,
and the dimensions of
and
are such that their sum and/or their product are well-defined.
Below you can find some exercises with explained solutions.
Let
be a sequence of
random vectors such
that
where
is a normal random vector with mean
and invertible covariance matrix
.
Let
be a sequence of
random matrices such
that
where
is a constant matrix. Find the limit in distribution of the sequence of
products
.
By Slutsky's
theoremwhere
The
random vector
has a multivariate normal distribution, because it is a linear transformation
of a multivariate normal random vector (see the lecture entitled
Linear combinations of
normal random variables). The expected value of
is
and
its covariance matrix
is
Therefore,
the sequence of products
converges in distribution to a multivariate normal random vector with mean
and covariance matrix
.
Let
be a sequence of
random vectors such
that
where
is a normal random vector with mean
and invertible covariance matrix
.
Let
be a sequence of
random matrices such
that
Find
the limit in distribution of the
sequence
By the Continuous Mapping
theoremTherefore,
by Slutsky's
theorem
Using
the Continuous mapping theorem again, we
get
Since
is an invertible covariance matrix, there exists an invertible matrix
such
that
Therefore,
where
we have
defined
The
random vector
has a multivariate normal distribution, because it is a linear transformation
of a multivariate normal random vector (see the lecture entitled
Linear combinations of
normal random variables). The expected value of
is
and
its covariance matrix
is
Thus,
has a standard multivariate normal distribution (mean
and variance
)
and
is
a quadratic form in a
standard normal random vector. So,
has a Chi-square distribution with
degrees of freedom. In summary, the sequence
converges in distribution to a Chi-square distribution with
degrees of freedom.
Let everything be as in the previous exercise, except for the fact that now
has mean
.
Find the limit in distribution of the
sequence
where
is a sequence of
random vectors converging in probability to
.
DefineBy
Slutsky's
theorem
where
is
a multivariate normal random variable with mean
and variance
.
Thus, we can use the results of the previous exercise on the
sequence
which
is the same
as
and
we find that it converges in distribution to a Chi-square distribution with
degrees of freedom.
van der Vaart, A. W. (2000) Asymptotic Statistics, Cambridge University Press.
Please cite as:
Taboga, Marco (2021). "Slutsky's theorem", Lectures on probability theory and mathematical statistics. Kindle Direct Publishing. Online appendix. https://www.statlect.com/asymptotic-theory/Slutsky-theorem.
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