It turns out that stochastic integrals may be defined for other stochastic processes than Brownian motions. The key properties that were used in the above approach were the martingale property and the square integrability of the Brownian motion.
As above, we consider a filtered probability space that satisfies the usual conditions. A martingale
defined on this space is said to be square integrable if for every
,
.
For instance, if is a Brownian motion on
and if
is a process which is progressively measurable with respect to the filtration
such that for every
,
then, the process
is a square integrable martingale.
The most important theorem concerning continuous square integrable martingales is that they admit a quadratic variation. Before proving this theorem, we state a preliminary lemma.
Lemma. Let be a continuous martingale such that
Then is constant.
Proof.
We may assume . For
, let us consider the stopping time
The stopped process is a martingale and therefore for
,
Consider now a sequence of subdivisions whose mesh tends to 0. By summing up the above inequality on the subdivision, we obtain
By letting , we get
. This implies
. Letting now
, we conclude
.
Theorem. Let be a martingale on
which is continuous and square integrable and such that
.There is a unique continuous and increasing process denoted
that satisfies the following properties:
-
;
- The process
is a martingale.
Actually for every and for every sequence of subdivisions
such that
the following convergence takes place in probability:
The process is called the quadratic variation process of
.
Proof.
We first assume that the martingale is bounded and prove that if
is a sequence of subdivisions of the interval
such that
then the limit
exists in and thus in probability.
Toward this goal, we introduce some notations. If is a subdivision of the time interval
and if
is a stochastic process, then we denote
where is such that
,
An easy computation on conditional expectations shows that if is a martingale, then the process
is also a martingale. Also, if
and
are two subdivisions of the time interval
, we will denote by
the subdivision obtained by putting together the points
and the points of
. Let now
be a sequence of subdivisions of
such that
Let us show that the sequence is a Cauchy sequence in
. Since the process
is a martingale (as a difference of two martingales), we deduce that
Let us denote by ‘s the points of the subdivision
and for fixed
, we denote by
the point of
which is the closest to
and such that
. We have
Therefore, from Cauchy-Schwarz inequality,
Since the martingale is assumed to be continuous, when
,
Thus, in order to conclude, it suffices to prove that is bounded. This fact is an easy consequence of the fact that
is assumed to be bounded. Therefore, in the
sense the following convergence holds
The process is seen to be a martingale because for every
and
, the process
is a martingale. Let us now show that the obtained process
is a continuous process. From Doob’s inequality, for
and
,
From Borel-Cantelli lemma, there exists therefore a sequence such that the sequence of continuous stochastic processes
almost surely uniformly converges to the process
. This proves the existence of a continuous version for
. Finally, to prove that
is increasing, it is enough to consider a an increasing sequence of subdivisions whose mesh tends to
. Let us now prove that
is the unique process such that
is a martingale. Let
and
be two continuous and increasing stochastic processes such that
and such that
and
are martingales. The process
is then seen to be a martingale that has a bounded variation. From the previous lemma, this implies that
is constant and therefore equal to 0 due to its initial condition.
We now turn to the case where is not necessarily bounded. Let us introduce the sequence of stopping times:
According to the previous arguments, for every , there is an increasing process
such that
is a martingale. By uniqueness of this process, it is clear that
, therefore we can define a process
by requiring that
provided that
. By using convergence theorems, it is then checked that
is a martingale.
Finally, let be a sequence of subdivisions whose mesh tends to
. We have for every
,
This easily implies the announced convergence in probability of the quadratic variations to
Exercise. Let be a square integrable martingale on a filtered probability space
. Assume that
. If
is a subdivision of the time interval
and if
is a stochastic process, we denote
where is such that
. Let
be a sequence of subdivisions of
such that
latex
Show that the following convergence holds in probability,
Thus, in the previous theorem, the convergence is actually uniform on compact intervals.
We have already pointed out that stochastic integrals with respect to Brownian motion provide an example of square integrable martingale, they therefore have a quadratic variation. The next proposition explicitly computes this variation.
Proposition. Let be a Brownian motion on a filtered probability space
that satisfies the usual conditions. Let
be a progressively measurable process such that for every
,
. For
:
Proof.
Since the process is continuous, increasing and equals
when
, we just need to prove that
is a martingale.
If , is a simple process, it is easily seen that for
:
We may then conclude by using the density of in
As a straightforward corollary of the existence of a quadratic variation for the square integrable martingales, we immediately obtain:
Corollary. Let and
be two continuous square integrable martingales on
such that
. There is a unique continuous process
with bounded variation that satisfies:
;
- The process
is a martingale.
Moreover, for and for every sequence
such that
, the following convergence holds in probability:
The process is called the quadratic covariation process of
and
.
Proof.
We may actually just use the formula
as a definition of the covariation and then check that the above properties are indeed satisfied
Exercise. Let and
be two independent Brownian motions. Show that
.