Branching process
In probability theory, a branching process is a type of mathematical object known as a stochastic process, which consists of collections of random variables. The random variables of a stochastic process are indexed by the natural numbers. The original purpose of branching processes was to serve as a mathematical model of a population in which each individual in generation produces some random number of individuals in generation , according, in the simplest case, to a fixed probability distribution that does not vary from individual to individual. Branching processes are used to model reproduction; for example, the individuals might correspond to bacteria, each of which generates 0, 1, or 2 offspring with some probability in a single time unit. Branching processes can also be used to model other systems with similar dynamics, e.g., the spread of surnames in genealogy or the propagation of neutrons in a nuclear reactor.
A central question in the theory of branching processes is the probability of ultimate extinction, where no individuals exist after some finite number of generations. Using Wald's equation, it can be shown that starting with one individual in generation zero, the expected size of generation n equals μn where μ is the expected number of children of each individual. If μ < 1, then the expected number of individuals goes rapidly to zero, which implies ultimate extinction with probability 1 by Markov's inequality. Alternatively, if μ > 1, then the probability of ultimate extinction is less than 1. If μ = 1, then ultimate extinction occurs with probability 1 unless each individual always has exactly one child.
In theoretical ecology, the parameter μ of a branching process is called the basic reproductive rate.
Mathematical formulation
The most common formulation of a branching process is that of the Galton-Watson process. Let Zn denote the state in period n, and let Xn,i be a random variable denoting the number of direct successors of member i in period n, where Xn,i are independent and identically distributed random variables over all n ∈ and i ∈ . Then the recurrence equation iswith Z0 = 1.
Alternatively, the branching process can be formulated as a random walk. Let Si denote the state in period i, and let Xi be a random variable that is iid over all i. Then the recurrence equation is
with S0 = 1. To gain some intuition for this formulation, imagine a walk where the goal is to visit every node, but every time a previously unvisited node is visited, additional nodes are revealed that must also be visited. Let Si represent the number of revealed but unvisited nodes in period i, and let Xi represent the number of new nodes that are revealed when node i is visited. Then in each period, the number of revealed but unvisited nodes equals the number of such nodes in the previous period, plus the new nodes that are revealed when visiting a node, minus the node that is visited. The process ends once all revealed nodes have been visited.
Continuous-time branching processes
For discrete-time branching processes, the "branching time" is fixed to be 1 for all individuals. For continuous-time branching processes, each individual waits for a random time, and then divides according to the given distribution. The waiting time for different individuals are independent, and are independent with the number of children. In general, the waiting time is an exponential variable with parameter λ for all individuals, so that the process is Markovian.Extinction problem for a Galton Watson process
The ultimate extinction probability is given byFor any nontrivial cases, the probability of ultimate extinction equals one if μ ≤ 1 and strictly less than one if μ > 1.
The process can be analyzed using the method of probability generating function. Let p0, p1, p2, ... be the probabilities of producing 0, 1, 2, ... offspring by each individual in each generation. Let dm be the extinction probability by the mth generation. Obviously, d0= 0. Since the probabilities for all paths that lead to 0 by the mth generation must be added up, the extinction probability is nondecreasing in generations. That is,
Therefore, dm converges to a limit d, and d is the ultimate extinction probability. If there are j offspring in the first generation, then to die out by the mth generation, each of these lines must die out in m-1 generations. Since they proceed independently, the probability is j. Thus,
The right-hand side of the equation is a probability generating function. Let h be the ordinary generating function for pi:
Using the generating function, the previous equation becomes
Since dm → d, d can be found by solving
This is also equivalent to finding the intersection point of lines y = z and y = h for z ≥ 0. y = z is a straight line. y = h is an increasing and convex function. There are at most two intersection points. Since is always an intersect point for the two functions, there only exist three cases:
Case 1 has another intersect point at z < 1.
Case 2 has only one intersect point at z = 1.
Case 3 has another intersect point at z > 1.
In case 1, the ultimate extinction probability is strictly less than one. For case 2 and 3, the ultimate extinction probability equals to one.
By observing that h′ = p1 + 2p2 + 3p3 + ... = μ is exactly the expected number of offspring a parent could produce, it can be concluded that for a branching process with generating function h for the number of offspring of a given parent, if the mean number of offspring produced by a single parent is less than or equal to one, then the ultimate extinction probability is one. If the mean number of offspring produced by a single parent is greater than one, then the ultimate extinction probability is strictly less than one.
Size dependent branching processes
Along with discussion of a more general model of branching processes known as age-dependent branching processes by Grimmett, in which individuals live for more than one generation, Krishna Athreya has identified three distinctions between size-dependent branching processes which have general application. Athreya identifies the three classes of size-dependent branching processes as sub-critical, stable, and super-critical branching measures. For Athreya, the central parameters are crucial to control if sub-critical and super-critical unstable branching is to be avoided. Size dependent branching processes are also discussed under the topic of resource-dependent branching processExample of extinction problem
Consider a parent can produce at most two offspring. The extinction probability in each generation is:with d0 = 0. For the ultimate extinction probability, we need to find d which satisfies d = p0 + p1d + p2d2.
Taking as example probabilities for the numbers of offspring produced p0 = 0.1, p1 = 0.6, and p2 = 0.3, the extinction probability for the first 20 generations is as follows:
Generation # | Extinction probability | Generation # | Extinction probability | |
1 | 0.1 | 11 | 0.3156 | |
2 | 0.163 | 12 | 0.3192 | |
3 | 0.2058 | 13 | 0.3221 | |
4 | 0.2362 | 14 | 0.3244 | |
5 | 0.2584 | 15 | 0.3262 | |
6 | 0.2751 | 16 | 0.3276 | |
7 | 0.2878 | 17 | 0.3288 | |
8 | 0.2975 | 18 | 0.3297 | |
9 | 0.3051 | 19 | 0.3304 | |
10 | 0.3109 | 20 | 0.331 |
In this example, we can solve algebraically that d = 1/3, and this is the value to which the extinction probability converges with increasing generations.
Simulating branching processes
Branching processes can be simulated for a range of problems. One specific use of simulated branching process is in the field of evolutionary biology. Phylogenetic trees, for example, can be simulated under several models, helping to develop and validate estimation methods as well as supporting hypothesis testing.Multitype branching processes
In multitype branching processes, individuals are not identical, but can be classified into n types. After each time step, an individual of type i will produce individuals of different types, and, a random vector representing the numbers of children in different types, satisfies a probability distribution on.For example, consider the population of cancer stem cells and non-stem cancer cells. After each time interval, each CSC has probability to produce two CSCs, probability to produce one CSC and one NSCC, probability to produce one CSC, and probability to produce nothing ; each NSCC has probability to produce two NSCCs, probability to produce one NSCC, and probability to produce nothing .
Law of large numbers for multitype branching processes
For multitype branching processes that the populations of different types grow exponentially, the proportions of different types converge almost surely to a constant vector under some mild conditions. This is the strong law of large numbers for multitype branching processes.For continuous-time cases, proportions of the population expectation satisfy an ODE system, which has a unique attracting fixed point. This fixed point is just the vector that the proportions converge to in the law of large numbers.
The monograph by Athreya and Ney summarizes a common set of conditions under which this law of large numbers is valid. Later there are some improvements through discarding different conditions.