In this Lecture we present some basic properties of the Brownian motion paths.
Proposition. Let be a standard Brownian motion.
Proof
Since the process is also a Brownian motion, in order to prove that
we just have to check that
Let . From the scaling property of Brownian motion, we have
Therefore we have
Now, we may observe that
Since the process is a Brownian motion independent of
, we have for
,
Therefore we get
Thus,
and we can deduce that
and
Since this holds for every , it implies that
By using this proposition we deduce the following proposition whose proof is let as an exercise to the reader.
Proposition (Recurrence property of Brownian motion)
Let be a Brownian motion. For every
and
,
Martingale theory provides powerful tools to study Brownian motion. We list in the Proposition below some martingales that are naturally associated with the Brownian motion and that will play an important role in the sequel.
Proposition. Let be a standard Brownian motion. The following processes are martingales (with respect to their natural filtration):
-
;
-
;
,
.
Proof
- First, we note that for
,
because
is a Gaussian random variable. Now for
,
, therefore
- For
,
and for
,
, therefore
- For
,
, because
is a Gaussian random variable. Then we have for
,
, and therefore
The previous martingales may be used to explicitly compute the distribution of some functionals associated to Brownian motion.
Proposition. Let be a standard Brownian motion. We denote for
,
For every , we have
Therefore, the distribution of is given by the density function
Proof
Let . For
, we denote by
the almost surely bounded stopping time:
Applying Doob’s stopping theorem to the martingale yields:
But for ,
Therefore from Lebesgue dominated convergence theorem, by letting , we obtain
Since by continuity of the Brownian paths we have,
we conclude,
The formula for the density function of is obtained by inverting the previous Laplace transform