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An (\xi,d,\beta)-superprocess, X(t,dx), within mathematics
probability theory Probability theory is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expressing it through a set ...
is a stochastic process on \mathbb \times \mathbb^d that is usually constructed as a special limit of near-critical branching diffusions.


Scaling limit of a discrete branching process


Simplest setting

For any integer N\geq 1, consider a branching Brownian process Y^N(t,dx) defined as follows: * Start at t=0 with N independent particles distributed according to a probability distribution \mu. * Each particle independently move according to a
Brownian motion Brownian motion, or pedesis (from grc, πήδησις "leaping"), is the random motion of particles suspended in a medium (a liquid or a gas). This pattern of motion typically consists of random fluctuations in a particle's position insi ...
. * Each particle independently dies with rate N. * When a particle dies, with probability 1/2 it gives birth to two offspring in the same location. The notation Y^N(t,dx) means should be interpreted as: at each time t, the number of particles in a set A\subset \mathbb is Y^N(t,A). In other words, Y is a measure-valued random process. Now, define a renormalized process: X^N(t,dx):=\fracY^N(t,dx) Then the finite-dimensional distributions of X^N converge as N\to +\infty to those of a measure-valued random process X(t,dx), which is called a (\xi,\phi)-''superprocess'', with initial value X(0) = \mu, where \phi(z):= \frac and where \xi is a Brownian motion (specifically, \xi=(\Omega,\mathcal,\mathcal_t,\xi_t,\textbf_x) where (\Omega,\mathcal) is a
measurable space In mathematics, a measurable space or Borel space is a basic object in measure theory. It consists of a set and a σ-algebra, which defines the subsets that will be measured. Definition Consider a set X and a σ-algebra \mathcal A on X. Then the ...
, (\mathcal_t)_ is a filtration, and \xi_t under \textbf_x has the law of a Brownian motion started at x). As will be clarified in the next section, \phi encodes an underlying branching mechanism, and \xi encodes the motion of the particles. Here, since \xi is a Brownian motion, the resulting object is known as a ''Super-brownian motion''.


Generalization to (\xi,\phi)-superprocesses

Our discrete branching system Y^N(t,dx) can be much more sophisticated, leading to a variety of superprocesses: * Instead of \mathbb, the state space can now be any Lusin space E. * The underlying motion of the particles can now be given by \xi=(\Omega,\mathcal,\mathcal_t,\xi_t,\textbf_x), where \xi_t is a
càdlàg In mathematics, a càdlàg (French: "''continue à droite, limite à gauche''"), RCLL ("right continuous with left limits"), or corlol ("continuous on (the) right, limit on (the) left") function is a function defined on the real numbers (or a subset ...
Markov process A Markov chain or Markov process is a stochastic model describing a sequence of possible events in which the probability of each event depends only on the state attained in the previous event. Informally, this may be thought of as, "What happe ...
(see, Chapter 4, for details). * A particle dies at rate \gamma_N * When a particle dies at time t, located in \xi_t, it gives birth to a random number of offspring n_. These offspring start to move from \xi_t. We require that the law of n_ depends solely on x, and that all (n_)_ are independent. Set p_k(x)=\mathbb _=k/math> and define g the associated
probability-generating function In probability theory, the probability generating function of a discrete random variable is a power series representation (the generating function) of the probability mass function of the random variable. Probability generating functions are oft ...
:g(x,z):=\sum\limits_^\infty p_k(x)z^k Add the following requirement that the expected number of offspring is bounded:\sup\limits_\mathbb _+\inftyDefine X^N(t,dx):=\fracY^N(t,dx) as above, and define the following crucial function:\phi_N(x,z):=N\gamma_N \left _N\Big(x,1-\frac\Big)\,-\,\Big(1-\frac\Big)\right/math>Add the requirement, for all a\geq 0, that \phi_N(x,z) is
Lipschitz continuous In mathematical analysis, Lipschitz continuity, named after German mathematician Rudolf Lipschitz, is a strong form of uniform continuity for functions. Intuitively, a Lipschitz continuous function is limited in how fast it can change: there e ...
with respect to z uniformly on E\times ,a/math>, and that \phi_N converges to some function \phi as N\to +\infty uniformly on E\times ,a/math>. Provided all of these conditions, the finite-dimensional distributions of X^N(t) converge to those of a measure-valued random process X(t,dx) which is called a (\xi,\phi)-''superprocess'', with initial value X(0) = \mu.


Commentary on \phi

Provided \lim_\gamma_N = +\infty, that is, the number of branching events becomes infinite, the requirement that \phi_N converges implies that, taking a Taylor expansion of g_N, the expected number of offspring is close to 1, and therefore that the process is near-critical.


Generalization to Dawson-Watanabe superprocesses

The branching particle system Y^N(t,dx) can be further generalized as follows: * The probability of death in the time interval [r,t) of a particle following trajectory (\xi_t)_ is \exp\left\ where \alpha_N is a positive measurable function and K is a continuous functional of \xi (see, chapter 2, for details). * When a particle following trajectory \xi dies at time t, it gives birth to offspring according to a measure-valued probability kernel F_N(\xi_,d\nu). In other words, the offspring are not necessarily born on their parent's location. The number of offspring is given by \nu(1). Assume that \sup\limits_\int \nu(1)F_N(x,d\nu)<+\infty. Then, under suitable hypotheses, the finite-dimensional distributions of X^N(t) converge to those of a measure-valued random process X(t,dx) which is called a ''Dawson-Watanabe'' ''superprocess'', with initial value X(0) = \mu.


Properties

A superprocess has a number of properties. It is a
Markov process A Markov chain or Markov process is a stochastic model describing a sequence of possible events in which the probability of each event depends only on the state attained in the previous event. Informally, this may be thought of as, "What happe ...
, and its
Markov kernel In probability theory, a Markov kernel (also known as a stochastic kernel or probability kernel) is a map that in the general theory of Markov processes plays the role that the transition matrix does in the theory of Markov processes with a finite ...
Q_t(\mu,d\nu) verifies the branching property:Q_t(\mu+\mu',\cdot) = Q_t(\mu,\cdot)*Q_t(\mu',\cdot)where * is the
convolution In mathematics (in particular, functional analysis), convolution is a mathematical operation on two functions ( and ) that produces a third function (f*g) that expresses how the shape of one is modified by the other. The term ''convolution'' ...
.A special class of superprocesses are (\alpha,d,\beta)-superprocesses, with \alpha\in (0,2],d\in \N,\beta \in (0,1]. A (\alpha,d,\beta)-superprocesses is defined on \R^d. Its ''branching mechanism'' is defined by its
factorial moment generating function In probability theory and statistics, the factorial moment generating function (FMGF) of the probability distribution of a real-valued random variable ''X'' is defined as :M_X(t)=\operatorname\bigl ^\bigr/math> for all complex numbers ''t'' for w ...
(the definition of a branching mechanism varies slightly among authors, some use the definition of \phi in the previous section, others use the factorial moment generating function): : \Phi(s) = \frac(1-s)^+s and the spatial motion of individual particles (noted \xi in the previous section) is given by the \alpha-symmetric stable process with infinitesimal generator \Delta_. The \alpha = 2 case means \xi is a standard
Brownian motion Brownian motion, or pedesis (from grc, πήδησις "leaping"), is the random motion of particles suspended in a medium (a liquid or a gas). This pattern of motion typically consists of random fluctuations in a particle's position insi ...
and the (2,d,1)-superprocess is called the super-Brownian motion. One of the most important properties of superprocesses is that they are intimately connected with certain nonlinear partial differential equations. The simplest such equation is \Delta u-u^2=0\ on\ \mathbb^d. When the spatial motion (migration) is a diffusion process, one talks about a superdiffusion. The connection between superdiffusions and nonlinear PDE's is similar to the one between diffusions and linear PDE's.


Further resources

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References

{{probability-stub Spatial processes