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In probability theory and
statistics Statistics (from German language, German: ''wikt:Statistik#German, Statistik'', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of ...
, the harmonic distribution is a continuous probability distribution. It was discovered by
Étienne Halphen Étienne Halphen (27 May 1911, in Bordeaux – 11 August 1954, in Neuilly-sur-Marne) was a French mathematician. He was known for his work in geometry, on probability distributions and information theory. Biography He was born as son of Germa ...
, who had become interested in the statistical modeling of natural events. His practical experience in data analysis motivated him to pioneer a new system of distributions that provided sufficient flexibility to fit a large variety of data sets. Halphen restricted his search to distributions whose parameters could be estimated using simple statistical approaches. Then, Halphen introduced for the first time what he called the harmonic distribution or harmonic law. The harmonic law is a special case of the generalized inverse Gaussian distribution family when \gamma=0.


History

One of Halphen's tasks, while working as statistician for Electricité de France, was the modeling of the monthly flow of water in hydroelectric stations. Halphen realized that the Pearson system of probability distributions could not be solved; it was inadequate for his purpose despite its remarkable properties. Therefore, Halphen's objective was to obtain a probability distribution with two parameters, subject to an exponential decay both for large and small flows. In 1941, Halphen decided that, in suitably scaled units, the density of ''X'' should be the same as that of 1/''X''. Taken this consideration, Halphen found the harmonic density function. Nowadays known as a hyperbolic distribution, has been studied by Rukhin (1974) and Barndorff-Nielsen (1978). The harmonic law is the only one two-parameter family of distributions that is closed under change of scale and under reciprocals, such that the maximum likelihood estimator of the population mean is the sample mean (Gauss' principle). In 1946, Halphen realized that introducing an additional parameter, flexibility could be improved. His efforts led him to generalize the harmonic law to obtain the generalized inverse Gaussian distribution density.


Definition


Notation

The harmonic distribution will be denoted by \theta(m,a). As a result, when a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
''X'' is distributed following a harmonic law, the parameter of scale ''m'' is the population median and ''a'' is the parameter of shape. :X\ \sim\operatorname(m,a)\,


Probability density function

The density function of the harmonic law, which depends on two parameters, has the form, :f(x;m,a)= \frac\exp\left(-\frac\left(\frac+\frac\right)\right) where * K_0(a) denotes the third kind of the modified Bessel function with index 0, * m \ge 0, * a \ge 0.


Properties


Moments

To derive an expression for the non-central moment of order ''r'', the integral representation of the Bessel function can be used. :\mu'_r = \int_0^\infty x^r f(x;m,a) \, dx= m^r \frac where: * ''r'' denotes the order of the
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. Hence the mean and the succeeding three moments about it are


Skewness

Skewness is the third standardized moment around the mean divided by the 3/2 power of the
standard deviation In statistics, the standard deviation is a measure of the amount of variation or dispersion of a set of values. A low standard deviation indicates that the values tend to be close to the mean (also called the expected value) of the set, while ...
, we work with, : \gamma_1=\frac=\frac * Always \gamma_1>0, so the mass of the distribution is concentrated on the left.


Kurtosis

The coefficient of kurtosis is the fourth standardized moment divided by the square of the variance., for the harmonic distribution it is : \gamma_2=\frac = \frac * Always \gamma_2>0 the distribution has a high acute peak around the mean and fatter tails.


Parameter estimation


Maximum likelihood estimation

The likelihood function is : L(a,m)= \prod_^n f(x_i\mid a,m)= \prod_^n \frac \exp\left \frac \left(\frac+\frac\right)\right After that, the log-likelihood function is : \ell(a,m) = \ln L(a,m)= -n\ln(2K_0(a)) - \sum_^n \ln x_i + \frac \sum_^n x_i +\frac\sum_^n \frac. From the log-likelihood function, the likelihood equations are :\frac = -n\frac + \frac \sum_^n x_i + \frac \sum_^n \frac=0, :\frac = \frac \sum_^n x_i +\frac \sum_^n \frac = 0. These equations admit only a numerical solution for ''a'', but we have :\hat=\sqrt; \qquad \sqrt=\frac.


Method of moments

The mean and the variance for the harmonic distribution are, : \begin \mu = m\frac \\ \sigma^2 = m^2 \left( 1+\frac-\frac\right) \end Note that :\sigma^2 = \mu^2\left(\frac\right)^2+\frac- \mu^2 The method of moments consists in to solve the following equations: : \begin \bar=m\frac \\ s^2= \bar^2 \left( \frac \right)^2+\frac- \bar^2 \end where s^2 is the sample variance and \bar is the sample mean. Solving the second equation we obtain \hat, and then we calculate \hat using : \hat=\frac.


Related distributions

The harmonic law is a sub-family of the generalized inverse Gaussian distribution. The density of GIG family have the form : f(x\mid m,\gamma)= \frac\exp\left \frac \left(\frac+\frac\right)\right The density of the generalized inverse Gaussian distribution family corresponds to the harmonic law when \gamma=0. When a tends to infinity, the harmonic law can be approximated by a normal distribution. This is indicated by demonstrating that if a tends to infinity, then U=\sqrt\left(\frac-1\right), which is a linear transformation of ''X'', tends to a normal distribution (N(0,1)). This explains why the normal distribution can be used successfully for certain data sets of ratios. Another related distribution is the log-harmonic law, which is the
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 i ...
of a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
whose logarithm follows an harmonic law. This family has an interesting property, the Pitman estimator of the location parameter does not depend on the choice of the loss function. Only two statistical models satisfy this property: One is the normal family of distributions and the other one is a three-parameter statistical model which contains the log-harmonic law.


See also

* Normal distribution * Generalized inverse Gaussian distribution


References

{{reflist Continuous distributions