In statistics, L-moments are a sequence of statistics used to summarize the shape of a probability distribution.Asquith, W.H. (2011) Distributional analysis with L-moment statistics using the R environment for statistical computing, Create Space Independent Publishing Platform, print-on-demand, They are linear combinations of () analogous to conventional moments, and can be used to calculate quantities analogous to standard deviation, skewness and kurtosis, termed the L-scale, L-skewness and L-kurtosis respectively (the L-mean is identical to the conventional mean). Standardized L-moments are called L-moment ratios and are analogous to standardized moments. Just as for conventional moments, a theoretical distribution has a set of population L-moments. Sample L-moments can be defined for a sample from the population, and can be used as estimators of the population L-moments.
where denotes the th order statistic (th smallest value) in an independent sample of size from the distribution of and denotes expected value operator. In particular, the first four population L-moments are
Note that the coefficients of the th L-moment are the same as in the th term of the binomial transform, as used in the -order finite difference (finite analog to the derivative).
The first two of these L-moments have conventional names:
Having a CDF , the expectation may be expressed using a Stieltjes integral as thus where is straight off the derivative of . This integral can often be made more tractable by introducing the quantile function via the change of variables : Since the L-moments are linear combinations of such expectations, the corresponding integrals can be combined into one for each moment, where the integrand is times a polynomial. We have where are the shifted Legendre polynomials, orthogonal on .
In particular
However Hosking cautions that of this series tend to give poor approximations for the tails of the distribution, and need not be monotonic. Similar problems arise with the Cornish–Fisher expansion of in terms of the of .
Grouping these by order statistic counts the number of ways an element of an element sample can be the th element of an element subset, and yields formulas of the form below. Direct estimators for the first four L-moments in a finite sample of observations are:
where is the th order statistic and is a binomial coefficient. Sample L-moments can also be defined indirectly in terms of probability weighted moments,
L-moment ratios lie within the interval Tighter bounds can be found for some specific L-moment ratios; in particular, the L-kurtosis lies in and
A quantity analogous to the coefficient of variation, but based on L-moments, can also be defined:
which is called the "coefficient of L-variation", or "L-CV". For a non-negative random variable, this lies in the interval and is identical to the Gini coefficient.
In addition to doing these with standard moments, the latter (estimation) is more commonly done using maximum likelihood methods; however using L-moments provides a number of advantages. Specifically, L-moments are more robust than conventional moments, and existence of higher L-moments only requires that the random variable have finite mean. One disadvantage of L-moment ratios for estimation is their typically smaller sensitivity. For instance, the Laplace distribution has a kurtosis of 6 and weak exponential tails, but a larger 4th L-moment ratio than e.g. the student-t distribution with d.f.=3, which has an infinite kurtosis and much heavier tails.
As an example consider a dataset with a few data points and one outlying data value. If the ordinary standard deviation of this data set is taken it will be highly influenced by this one point: however, if the L-scale is taken it will be far less sensitive to this data value. Consequently, L-moments are far more meaningful when dealing with outliers in data than conventional moments. However, there are also other better suited methods to achieve an even higher robustness than just replacing moments by L-moments. One example of this is using L-moments as summary statistics in extreme value theory (EVT). This application shows the limited robustness of L-moments, i.e. L-statistics are not resistant statistics, as a single extreme value can throw them off, but because they are only linear (not higher-order statistics), they are less affected by extreme values than conventional moments.
Another advantage L-moments have over conventional moments is that their existence only requires the random variable to have finite mean, so the L-moments exist even if the higher conventional moments do not exist (for example, for Student's t distribution with low degrees of freedom). A finite variance is required in addition in order for the standard errors of estimates of the L-moments to be finite.
Some appearances of L-moments in the statistical literature include the book by David & Nagaraja (2003, Section 9.9)
The notation for the parameters of each distribution is the same as that used in the linked article. In the expression for the mean of the Gumbel distribution, is the
L-moment ratios
Related quantities
Usage
Values for some common distributions
Extensions
See also
External links
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