Poisson boundary explained
In mathematics, the Poisson boundary is a measure space associated to a random walk. It is an object designed to encode the asymptotic behaviour of the random walk, i.e. how trajectories diverge when the number of steps goes to infinity. Despite being called a boundary it is in general a purely measure-theoretical object and not a boundary in the topological sense. However, in the case where the random walk is on a topological space the Poisson boundary can be related to the Martin boundary, which is an analytic construction yielding a genuine topological boundary. Both boundaries are related to harmonic functions on the space via generalisations of the Poisson formula.
The case of the hyperbolic plane
The Poisson formula states that given a positive harmonic function
on the
unit disc
(that is,
where
is the
Laplace–Beltrami operator associated to the
Poincaré metric on
) there exists a unique measure
on the boundary
\partialD=\{z\inC:|z|=1\}
such that the equality
f(z)=\int\partialK(z,\xi)d\mu(\xi)
where
is the
Poisson kernel, holds for all
. One way to interpret this is that the functions
for
are up to scaling all the
extreme points in the cone of nonnegative harmonic functions. This analytical interpretation of the set
leads to the more general notion of
minimal Martin boundary (which in this case is the full
Martin boundary).
This fact can also be interpreted in a probabilistic manner. If
is the
Markov process associated to
(i.e. the
Brownian motion on the disc with the Poincaré Riemannian metric), then the process
is a continuous-time
martingale, and as such converges almost everywhere to a function on the
Wiener space of possible (infinite) trajectories for
. Thus the Poisson formula identifies this measured space with the Martin boundary constructed above, and ultimately to
endowed with the class of Lebesgue measure (note that this identification can be made directly since a path in Wiener space converges almost surely to a point on
). This interpretation of
as the space of trajectories for a Markov process is a special case of the construction of the Poisson boundary.
Finally, the constructions above can be discretised, i.e. restricted to the random walks on the orbits of a Fuchsian group acting on
. This gives an identification of the extremal positive harmonic functions on the group, and to the space of trajectories of the random walk on the group (both with respect to a given probability measure), with the topological/measured space
.
Definition
The Poisson boundary of a random walk on a discrete group
Let
be a discrete group and
a probability measure on
, which will be used to define a random walk
on
(a discrete-time Markov process whose transition probabilities are
); the measure
is called the
step distribution for the random walk. Let
be another measure on
, which will be the initial state for the random walk. The space
of trajectories for
is endowed with a measure
whose marginales are
(where
denotes
convolution of measures; this is the distribution of the random walk after
steps). There is also an
equivalence relation
on
, which identifies
if there exists
such that
for all
(the two trajectories have the same "tail"). The
Poisson boundary of
is then the measured space
obtained as the quotient of
by the equivalence relation
.
If
is the initial distribution of a random walk with step distribution
then the measure
on
obtained as the pushforward of
. It is a stationary measure for
, meaning that
\intG\nu(g-1A)\mu(g)=\nu\theta(A).
It is possible to give an implicit definition of the Poisson boundary as the maximal
-set with a
-stationary measure
, satisfying the additional condition that
almost surely
weakly converges to a
Dirac mass.
The Poisson formula
Let
be a
-harmonic function on
, meaning that
. Then the random variable
is a discrete-time martingale and so it converges almost surely. Denote by
the function on
obtained by taking the limit of the values of
along a trajectory (this is defined almost everywhere on
and shift-invariant). Let
and let
be the measure obtained by the construction above with
(the Dirac mass at
). If
is either positive or bounded then
is as well and we have the
Poisson formula:
f(x)=\int\Gamma\hatf(\gamma)d\nux(\gamma).
This establishes a bijection between
-harmonic bounded functions and essentially bounded measurable functions on
. In particular the Poisson boundary of
is trivial, that is reduced to a point, if and only if the only bounded
-harmonic functions on
are constant.
General definition
The general setting is that of a Markov operator on a measured space, a notion which generalises the Markov operator
associated to a random walk. Much of the theory can be developed in this abstract and very general setting.
The Martin boundary
Martin boundary of a discrete group
Let
be a random walk on a discrete group. Let
be the probability to get from
to
in
steps, i.e.
. The Green kernel is by definition:
If the walk is transient then this series is convergent for all
. Fix a point
and define the Martin kernel by:
. The embedding
has a relatively compact image for the topology of pointwise convergence, and the Martin compactification is the closure of this image. A point
is usually represented by the notation
.
The Martin kernels are positive harmonic functions and every positive harmonic function can be expressed as an integral of functions on the boundary, that is for every positive harmonic function there is a measure
on
such that a Poisson-like formula holds:
f(x)=\intlKo(x,\gamma)d\nuo,(\gamma).
The measures
are supported on the
minimal Martin boundary, whose elements can also be characterised by being minimal. A positive harmonic function
is said to be
minimal if for any harmonic function
with
there exists
such that
.
There is actually a whole family of Martin compactifications. Define the Green generating series as
Denote by
the radius of convergence of this
power seriesand define for
the
-Martin kernel by
.The closure of the embedding
is called the
-Martin compactification.
Martin boundary of a Riemannian manifold
For a Riemannian manifold the Martin boundary is constructed, when it exists, in the same way as above, using the Green function of the Laplace–Beltrami operator
. In this case there is again a whole family of Martin compactifications associated to the operators
for
where
is the bottom of the spectrum. Examples where this construction can be used to define a compactification are bounded domains in the plane and
symmetric spaces of non-compact type.
The relationship between Martin and Poisson boundaries
The measure
corresponding to the constant function is called the
harmonic measure on the Martin boundary. With this measure the Martin boundary is isomorphic to the Poisson boundary.
Examples
Nilpotent groups
The Poisson and Martin boundaries are trivial for symmetric random walks in nilpotent groups. On the other hand, when the random walk is non-centered, the study of the full Martin boundary, including the minimal functions, is far less conclusive.
Lie groups and discrete subgroups
For random walks on a semisimple Lie group (with step distribution absolutely continuous with respect to the Haar measure) the Poisson boundary is equal to the Furstenberg boundary. The Poisson boundary of the Brownian motion on the associated symmetric space is also the Furstenberg boundary. The full Martin boundary is also well-studied in these cases and can always be described in a geometric manner. For example, for groups of rank one (for example the isometry groups of hyperbolic spaces) the full Martin boundary is the same as the minimal Martin boundary (the situation in higher-rank groups is more complicated).
The Poisson boundary of a Zariski-dense subgroup of a semisimple Lie group, for example a lattice, is also equal to the Furstenberg boundary of the group.
Hyperbolic groups
For random walks on a hyperbolic group, under rather weak assumptions on the step distribution which always hold for a simple walk (a more general condition is that the first moment be finite) the Poisson boundary is always equal to the Gromov boundary. For example, the Poisson boundary of a free group is the space of ends of its Cayley tree. The identification of the full Martin boundary is more involved; in case the random walk has finite range (the step distribution is supported on a finite set) the Martin boundary coincides with the minimal Martin boundary and both coincide with the Gromov boundary.
References
- News: 1269841 . Ballmann . Werner . Ledrappier . François . The Poisson boundary for rank one manifolds and their cocompact lattices . Forum Math. . 6 . 1994 . 3 . 301 - 313.
- News: 0146298 . Furstenberg . Harry . A Poisson formula for semi-simple Lie groups . Ann. of Math. . 2 . 77 . 1963 . 335 - 386.
- Book: Guivarc'h . Yves . Ji . Lizhen . Taylor . John C. . Compactifications of symmetric spaces . Birkhäuser . 1998.
- Book: Kaimanovich, Vadim A. . 1411218 . Boundaries of invariant Markov operators: the identification problem . Pollicott . Mark . Schmidt . Klaus . Ergodic theory of Zd actions (Warwick, 1993–1994) . 127–176 . London Math. Soc. Lecture Note Ser. . 228 . Cambridge Univ. Press, Cambridge . 1996.
- News: 1815698 . Kaimanovich . Vadim A. . The Poisson formula for groups with hyperbolic properties. . Ann. of Math. . 2 . 152 . 2000 . 659–692.