Skellam Distribution
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The Skellam distribution is the
discrete probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomenon ...
of the difference N_1-N_2 of two
statistically independent Independence is a fundamental notion in probability theory, as in statistics and the theory of stochastic processes. Two events are independent, statistically independent, or stochastically independent if, informally speaking, the occurrence of o ...
random variables N_1 and N_2, each Poisson-distributed with respective expected values \mu_1 and \mu_2. It is useful in describing the statistics of the difference of two images with simple
photon noise Photon noise is the randomness in signal associated with photons arriving at a detector. For a simple black body emitting on an absorber, the noise-equivalent power is given by :\mathrm^2 = 2 h^2 \nu^2 \Delta\nu \left( \frac + n^2 \right) where ...
, as well as describing the
point spread Spread betting is any of various types of wagering on the outcome of an event where the pay-off is based on the accuracy of the wager, rather than a simple "win or lose" outcome, such as fixed-odds (or money-line) betting or parimutuel betting. ...
distribution in sports where all scored points are equal, such as
baseball Baseball is a bat-and-ball sport played between two teams of nine players each, taking turns batting and fielding. The game occurs over the course of several plays, with each play generally beginning when a player on the fielding t ...
,
hockey Hockey is a term used to denote a family of various types of both summer and winter team sports which originated on either an outdoor field, sheet of ice, or dry floor such as in a gymnasium. While these sports vary in specific rules, numbers o ...
and soccer. The distribution is also applicable to a special case of the difference of dependent Poisson random variables, but just the obvious case where the two variables have a common additive random contribution which is cancelled by the differencing: see Karlis & Ntzoufras (2003) for details and an application. The probability mass function for the Skellam distribution for a difference K=N_1-N_2 between two independent Poisson-distributed random variables with means \mu_1 and \mu_2 is given by: : p(k;\mu_1,\mu_2) = \Pr\ = e^ \left(\right)^I_(2\sqrt) where ''Ik''(''z'') is the
modified Bessel function Bessel functions, first defined by the mathematician Daniel Bernoulli and then generalized by Friedrich Bessel, are canonical solutions of Bessel's differential equation x^2 \frac + x \frac + \left(x^2 - \alpha^2 \right)y = 0 for an arbitrary ...
of the first kind. Since ''k'' is an integer we have that ''Ik''(''z'')=''I, k, ''(''z'').


Derivation

The probability mass function of a Poisson-distributed random variable with mean μ is given by : p(k;\mu)=e^.\, for k \ge 0 (and zero otherwise). The Skellam probability mass function for the difference of two independent counts K=N_1-N_2 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'' ...
of two Poisson distributions: ( Skellam, 1946) : \begin p(k;\mu_1,\mu_2) & =\sum_^\infty p(k+n;\mu_1)p(n;\mu_2) \\ & =e^\sum_^\infty \end Since the Poisson distribution is zero for negative values of the count (p(N<0;\mu)=0), the second sum is only taken for those terms where n\ge0 and n+k\ge0. It can be shown that the above sum implies that :\frac=\left(\frac\right)^k so that: : p(k;\mu_1,\mu_2)= e^ \left(\right)^I_(2\sqrt) where ''I'' k(z) is the
modified Bessel function Bessel functions, first defined by the mathematician Daniel Bernoulli and then generalized by Friedrich Bessel, are canonical solutions of Bessel's differential equation x^2 \frac + x \frac + \left(x^2 - \alpha^2 \right)y = 0 for an arbitrary ...
of the first kind. The special case for \mu_1=\mu_2(=\mu) is given by Irwin (1937): : p\left(k;\mu,\mu\right) = e^I_(2\mu). Using the limiting values of the modified Bessel function for small arguments, we can recover the Poisson distribution as a special case of the Skellam distribution for \mu_2=0.


Properties

As it is a discrete probability function, the Skellam probability mass function is normalized: : \sum_^\infty p(k;\mu_1,\mu_2)=1. We know that the
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 often ...
(pgf) for a
Poisson distribution In probability theory and statistics, the Poisson distribution is a discrete probability distribution that expresses the probability of a given number of events occurring in a fixed interval of time or space if these events occur with a known co ...
is: : G\left(t;\mu\right)= e^. It follows that the pgf, G(t;\mu_1,\mu_2), for a Skellam probability mass function will be: : \begin G(t;\mu_1,\mu_2) & = \sum_^\infty p(k;\mu_1,\mu_2)t^k \\ pt& = G\left(t;\mu_1\right)G\left(1/t;\mu_2\right) \\ pt& = e^. \end Notice that the form of the
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 ...
implies that the distribution of the sums or the differences of any number of independent Skellam-distributed variables are again Skellam-distributed. It is sometimes claimed that any linear combination of two Skellam distributed variables are again Skellam-distributed, but this is clearly not true since any multiplier other than \pm 1 would change the support of the distribution and alter the pattern of moments in a way that no Skellam distribution can satisfy. The
moment-generating function In probability theory and statistics, the moment-generating function of a real-valued random variable is an alternative specification of its probability distribution. Thus, it provides the basis of an alternative route to analytical results compare ...
is given by: :M\left(t;\mu_1,\mu_2\right) = G(e^t;\mu_1,\mu_2) = \sum_^\infty \,m_k which yields the raw moments ''m''''k'' . Define: :\Delta\ \stackrel\ \mu_1-\mu_2\, :\mu\ \stackrel\ (\mu_1+\mu_2)/2.\, Then the raw moments ''m''''k'' are :m_1=\left.\Delta\right.\, :m_2=\left.2\mu+\Delta^2\right.\, :m_3=\left.\Delta(1+6\mu+\Delta^2)\right.\, The central moments ''M'' ''k'' are :M_2=\left.2\mu\right.,\, :M_3=\left.\Delta\right.,\, :M_4=\left.2\mu+12\mu^2\right..\, The
mean There are several kinds of mean in mathematics, especially in statistics. Each mean serves to summarize a given group of data, often to better understand the overall value (magnitude and sign) of a given data set. For a data set, the '' ari ...
,
variance In probability theory and statistics, variance is the expectation of the squared deviation of a random variable from its population mean or sample mean. Variance is a measure of dispersion, meaning it is a measure of how far a set of numbe ...
,
skewness In probability theory and statistics, skewness is a measure of the asymmetry of the probability distribution of a real-valued random variable about its mean. The skewness value can be positive, zero, negative, or undefined. For a unimodal ...
, and kurtosis excess are respectively: : \begin \operatorname E(n) & = \Delta, \\ pt\sigma^2 & =2\mu, \\ pt\gamma_1 & =\Delta/(2\mu)^, \\ pt\gamma_2 & = 1/2. \end The cumulant-generating function is given by: : K(t;\mu_1,\mu_2)\ \stackrel\ \ln(M(t;\mu_1,\mu_2)) = \sum_^\infty \,\kappa_k which yields the
cumulant In probability theory and statistics, the cumulants of a probability distribution are a set of quantities that provide an alternative to the '' moments'' of the distribution. Any two probability distributions whose moments are identical will have ...
s: :\kappa_=\left.2\mu\right. :\kappa_=\left.\Delta\right. . For the special case when μ1 = μ2, an
asymptotic expansion In mathematics, an asymptotic expansion, asymptotic series or Poincaré expansion (after Henri Poincaré) is a formal series of functions which has the property that truncating the series after a finite number of terms provides an approximation to ...
of the
modified Bessel function of the first kind Bessel functions, first defined by the mathematician Daniel Bernoulli and then generalized by Friedrich Bessel, are canonical solutions of Bessel's differential equation x^2 \frac + x \frac + \left(x^2 - \alpha^2 \right)y = 0 for an arbitrar ...
yields for large μ: : p(k;\mu,\mu)\sim \left +\sum_^\infty (-1)^n\right (Abramowitz & Stegun 1972, p. 377). Also, for this special case, when ''k'' is also large, and of order of the square root of 2μ, the distribution tends to a
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
: : p(k;\mu,\mu)\sim . These special results can easily be extended to the more general case of different means.


Bounds on weight above zero

If X \sim \operatorname (\mu_1, \mu_2) , with \mu_1 < \mu_2, then :: \frac - \frac - \frac \leq \Pr\ \leq \exp (- (\sqrt -\sqrt)^2) Details can be found in Poisson distribution#Poisson races


References

* *Irwin, J. O. (1937) "The frequency distribution of the difference between two independent variates following the same Poisson distribution." ''
Journal of the Royal Statistical Society The ''Journal of the Royal Statistical Society'' is a peer-reviewed scientific journal of statistics. It comprises three series and is published by Wiley for the Royal Statistical Society. History The Statistical Society of London was founded ...
: Series A'', 100 (3), 415–416. *Karlis, D. and Ntzoufras, I. (2003) "Analysis of sports data using bivariate Poisson models". ''Journal of the Royal Statistical Society, Series D'', 52 (3), 381–393. *Karlis D. and Ntzoufras I. (2006). Bayesian analysis of the differences of count data. ''Statistics in Medicine'', 25, 1885–1905

* John Gordon Skellam, Skellam, J. G. (1946) "The frequency distribution of the difference between two Poisson variates belonging to different populations". ''Journal of the Royal Statistical Society, Series A'', 109 (3), 296.


See also

* Ratio distribution for (truncated) Poisson distributions {{ProbDistributions, Skellam distribution Discrete distributions Poisson distribution Infinitely divisible probability distributions