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GALTON-WATSON PROCESS

The 'Galton-Watson process' is a stochastic process arising from Francis Galton's statistical investigation of the extinction of surnames.

Contents
History
Concepts
Mathematical definition
See also
References
External links

History


Galton-Watson survival probabilities for different exponential rates of population growth, if the number of children of each parent node can be assumed to follow a Poisson distribution. For λ ≤ 1 eventual extinction will occur with probability 1. But the probability of survival of a new type may be quite low even if λ > 1 and the population as a whole is experiencing quite strong exponential increase.

There was concern amongst the Victorians that aristocratic surnames were becoming extinct. Galton originally posed the question regarding the probability of such an event in the Educational Times of 1873, and the Reverend Henry William Watson replied with a solution. Together, they then wrote an 1874 paper entitled ''On the probability of extinction of families''. However, the concept was previously discussed by I. J. Bienaymé; see Heyde and Seneta 1977; though it appears that Galton and Watson derived their process independently. For a detailed history see Kendall (1966 and 1975).

Concepts


Assume (as was taken quite for granted in Galton's time and is still the most frequent occurrence in many countries), that surnames are passed on to all male children by their father. Suppose the number of a man's sons to be a random variable distributed on the set { 0, 1, 2, 3, ...}. Further suppose the numbers of different men's sons to be independent random variables, all having the same distribution.
Then the simplest substantial mathematical conclusion is that if the average number of a man's sons is 1 or less, then their surname will surely die out, and if it is more than 1, then there is more than zero probability that it will survive forever.
Modern applications include the survival probabilities for a new mutant gene, or the initiation of a nuclear chain reaction, or the dynamics of disease outbreaks in their first generations of spread, or the chances of extinction of small population of organisms; as well as explaining (perhaps closest to Galton's original interest) why only a handful of males in the deep past of humanity now have ''any'' surviving male-line descendants, reflected in a rather small number of distinctive human Y-chromosome DNA haplogroups.
A corollary of high extinction probabilities is that if a lineage ''has'' survived, it is likely to have experienced, purely by chance, an unusually high growth rate in its early generations at least when compared to the rest of the population.

Mathematical definition


A Galton-Watson process is a stochastic process {''X''''n''} which evolves according to the recurrence formula ''X''0 = 1 and
:X_{n+1} = sum_{j=1}^{X_n} xi_j^{(n+1)}
where for each ''n'', xi_j^{(n)} is a sequence of IID natural number-valued random variables. The extinction probability is given by
:lim_{n o infty} Pr(X_n = 0)
and is equal to one if ''E''{''ξ1''} ≤ 1 and strictly less than one if ''E''{''ξ1''} > 1.
The process can be treated analytically using the method of probability generating functions.
If the number of children ''ξ j'' at each node follows a Poisson distribution, a particularly simple recurrence can be found for the total extinction probability ''xn'' for a process starting with a single individual at time ''n''=0:
:x_{n+1} = e^{lambda (x_n - 1)}
giving the curves plotted above.

See also



branching process

References



★ 'C C Heyde and E Seneta' (1977) ''I.J. Bienayme: Statistical Theory Anticipated''. Berlin, Germany.

★ 'D G Kendall'. (1966) ''Journal of the London Mathematical Society'' '41':385-406

★ 'D G Kendall'. (1975) ''Bulletin of the London Mathematical Society'' '7':225-253

External links



On the Probability of the Extinction of Families

"Survival of a Single Mutant" by Peter M. Lee of the University of York

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