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L-moment

In statistics, L-moments are a sequence of statistics used to summarize the shape of a probability distribution.[1][2][3][4] They are linear combinations of order statistics (L-statistics) 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). Standardised 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.

Population L-moments edit

For a random variable X, the rth population L-moment is[1]

 

where Xk:n denotes the rth order statistic (rth smallest value) in an independent sample of size n from the distribution of X and   denotes expected value operator. In particular, the first four population L-moments are

 
 
 
 

Note that the coefficients of the rth L-moment are the same as in the rth term of the binomial transform, as used in the r-order finite difference (finite analog to the derivative).

The first two of these L-moments have conventional names:

  is the "mean", "L-mean", or "L-location",
  is the "L-scale".

The L-scale is equal to half the Mean absolute difference.[5]

Sample L-moments edit

The sample L-moments can be computed as the population L-moments of the sample, summing over r-element subsets of the sample   hence averaging by dividing by the binomial coefficient:

 

Grouping these by order statistic counts the number of ways an element of an n element sample can be the jth element of an r element subset, and yields formulas of the form below. Direct estimators for the first four L-moments in a finite sample of n observations are:[6]

 
 
 
 

where x(i) is the ith order statistic and   is a binomial coefficient. Sample L-moments can also be defined indirectly in terms of probability weighted moments,[1][7][8] which leads to a more efficient algorithm for their computation.[6][9]

L-moment ratios edit

A set of L-moment ratios, or scaled L-moments, is defined by

 

The most useful of these are   called the L-skewness, and   the L-kurtosis.

L-moment ratios lie within the interval ( −1, 1 ) . Tighter bounds can be found for some specific L-moment ratios; in particular, the L-kurtosis   lies in [ + 1 /4, 1 ) , and

 [1]

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 ( 0, 1 ) [1] and is identical to the Gini coefficient.[10]

Related quantities edit

L-moments are statistical quantities that are derived from probability weighted moments[11] (PWM) which were defined earlier (1979).[7] PWM are used to efficiently estimate the parameters of distributions expressable in inverse form such as the Gumbel,[8] the Tukey lambda, and the Wakeby distributions.

Usage edit

There are two common ways that L-moments are used, in both cases analogously to the conventional moments:

  1. As summary statistics for data.
  2. To derive estimators for the parameters of probability distributions, applying the method of moments to the L-moments rather than conventional moments.

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.[1]

Some appearances of L-moments in the statistical literature include the book by David & Nagaraja (2003, Section 9.9)[12] and a number of papers.[10][13][14][15][16][17] A number of favourable comparisons of L-moments with ordinary moments have been reported.[18][19]

Values for some common distributions edit

The table below gives expressions for the first two L moments and numerical values of the first two L-moment ratios of some common continuous probability distributions with constant L-moment ratios.[1][5] More complex expressions have been derived for some further distributions for which the L-moment ratios vary with one or more of the distributional parameters, including the log-normal, Gamma, generalized Pareto, generalized extreme value, and generalized logistic distributions.[1]

Distribution Parameters mean, λ1 L-scale, λ2 L-skewness, τ3 L-kurtosis, τ4
Uniform a, b  1 /2(a + b)  1 /6(ba) 0 0
Logistic μ, s μ s 0  1 /6 = 0.1667
Normal μ, σ2 μ σ/π 0 30 θm/π  - 9 = 0.1226
Laplace μ, b μ  3 / 4 b 0 1/ 3 2 = 0.2357
Student's t, 2 d.f. ν = 2 0 π/ 2 2 = 1.111 0  3 / 8 = 0.375
Student's t, 4 d.f. ν = 4 0  15 /64 π = 0.7363 0  111 /512 = 0.2168
Exponential λ 1/λ 1/ 2 λ  1 /3 = 0.3333  1 /6 = 0.1667
Gumbel μ, β μ + γe β β log2(3) 2 log2(3) - 3 = 0.1699 16 - 10 log2(3) = 0.1504

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, γe is the Euler–Mascheroni constant 0.5772 1566 4901 ... .

Extensions edit

Trimmed L-moments are generalizations of L-moments that give zero weight to extreme observations. They are therefore more robust to the presence of outliers, and unlike L-moments they may be well-defined for distributions for which the mean does not exist, such as the Cauchy distribution.[20]

See also edit

References edit

  1. ^ a b c d e f g h Hosking, J.R.M. (1990). "L-moments: analysis and estimation of distributions using linear combinations of order statistics". Journal of the Royal Statistical Society, Series B. 52 (1): 105–124. JSTOR 2345653.
  2. ^ Hosking, J.R.M. (1992). "Moments or L moments? An example comparing two measures of distributional shape". The American Statistician. 46 (3): 186–189. doi:10.2307/2685210. JSTOR 2685210.
  3. ^ Hosking, J.R.M. (2006). "On the characterization of distributions by their L-moments". Journal of Statistical Planning and Inference. 136: 193–198. doi:10.1016/j.jspi.2004.06.004.
  4. ^ 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], ISBN 1-463-50841-7
  5. ^ a b Jones, M.C. (2002). "Student's simplest distribution". Journal of the Royal Statistical Society, Series D. 51 (1): 41–49. doi:10.1111/1467-9884.00297. JSTOR 3650389.
  6. ^ a b Wang, Q.J. (1996). "Direct sample estimators of L-moments". Water Resources Research. 32 (12): 3617–3619. doi:10.1029/96WR02675.
  7. ^ a b Greenwood, J.A.; Landwehr, J.M.; Matalas, N.C.; Wallis, J.R. (1979). (PDF). Water Resources Research. 15 (5): 1049–1054. doi:10.1029/WR015i005p01049. S2CID 121955257. Archived from the original (PDF) on 2020-02-10.
  8. ^ a b Landwehr, J.M.; Matalas, N.C.; Wallis, J.R. (1979). "Probability weighted moments compared with some traditional techniques in estimating Gumbel parameters and quantiles". Water Resources Research. 15 (5): 1055–1064. doi:10.1029/WR015i005p01055.
  9. ^ "L moments". NIST Dataplot. itl.nist.gov (documentation). National Institute of Standards and Technology. 6 January 2006. Retrieved 19 January 2013.
  10. ^ a b Valbuena, R.; Maltamo, M.; Mehtätalo, L.; Packalen, P. (2017). "Key structural features of Boreal forests may be detected directly using L-moments from airborne lidar data". Remote Sensing of Environment. 194: 437–446. doi:10.1016/j.rse.2016.10.024.
  11. ^ Hosking, JRM; Wallis, JR (2005). Regional Frequency Analysis: An Approach Based on L-moments. Cambridge University Press. p. 3. ISBN 978-0521019408. Retrieved 22 January 2013.
  12. ^ David, H. A.; Nagaraja, H. N. (2003). Order Statistics (3rd ed.). Wiley. ISBN 978-0-471-38926-2.
  13. ^ Serfling, R.; Xiao, P. (2007). "A contribution to multivariate L-moments: L-comoment matrices". Journal of Multivariate Analysis. 98 (9): 1765–1781. CiteSeerX 10.1.1.62.4288. doi:10.1016/j.jmva.2007.01.008.
  14. ^ Delicado, P.; Goria, M. N. (2008). "A small sample comparison of maximum likelihood, moments and L-moments methods for the asymmetric exponential power distribution". Computational Statistics & Data Analysis. 52 (3): 1661–1673. doi:10.1016/j.csda.2007.05.021.
  15. ^ Alkasasbeh, M. R.; Raqab, M. Z. (2009). "Estimation of the generalized logistic distribution parameters: comparative study". Statistical Methodology. 6 (3): 262–279. doi:10.1016/j.stamet.2008.10.001.
  16. ^ Jones, M. C. (2004). "On some expressions for variance, covariance, skewness and L-moments". Journal of Statistical Planning and Inference. 126 (1): 97–106. doi:10.1016/j.jspi.2003.09.001.
  17. ^ Jones, M. C. (2009). "Kumaraswamy's distribution: A beta-type distribution with some tractability advantages". Statistical Methodology. 6 (1): 70–81. doi:10.1016/j.stamet.2008.04.001.
  18. ^ Royston, P. (1992). "Which measures of skewness and kurtosis are best?". Statistics in Medicine. 11 (3): 333–343. doi:10.1002/sim.4780110306. PMID 1609174.
  19. ^ Ulrych, T. J.; Velis, D. R.; Woodbury, A. D.; Sacchi, M. D. (2000). "L-moments and C-moments". Stochastic Environmental Research and Risk Assessment. 14 (1): 50–68. doi:10.1007/s004770050004. S2CID 120542594.
  20. ^ Elamir, Elsayed A. H.; Seheult, Allan H. (2003). "Trimmed L-moments". Computational Statistics & Data Analysis. 43 (3): 299–314. doi:10.1016/S0167-9473(02)00250-5.

External links edit

moment, statistics, sequence, statistics, used, summarize, shape, probability, distribution, they, linear, combinations, order, statistics, statistics, analogous, conventional, moments, used, calculate, quantities, analogous, standard, deviation, skewness, kur. In statistics L moments are a sequence of statistics used to summarize the shape of a probability distribution 1 2 3 4 They are linear combinations of order statistics L statistics 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 Standardised 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 Contents 1 Population L moments 2 Sample L moments 3 L moment ratios 4 Related quantities 5 Usage 6 Values for some common distributions 7 Extensions 8 See also 9 References 10 External linksPopulation L moments editFor a random variable X the r th population L moment is 1 lr 1 r k 0r 1 1 k r 1k E Xr k r displaystyle lambda r frac 1 r sum k 0 r 1 1 k binom r 1 k operatorname mathbb E X r k r nbsp where Xk n denotes the r th order statistic r th smallest value in an independent sample of size n from the distribution of X and E displaystyle mathbb E nbsp denotes expected value operator In particular the first four population L moments are l1 E X displaystyle lambda 1 operatorname mathbb E X nbsp l2 1 2 E X2 2 E X1 2 displaystyle lambda 2 frac 1 2 Bigl operatorname mathbb E X 2 2 operatorname mathbb E X 1 2 Bigr nbsp l3 1 3 E X3 3 2E X2 3 E X1 3 displaystyle lambda 3 frac 1 3 Bigl operatorname mathbb E X 3 3 2 operatorname mathbb E X 2 3 operatorname mathbb E X 1 3 Bigr nbsp l4 1 4 E X4 4 3E X3 4 3E X2 4 E X1 4 displaystyle lambda 4 frac 1 4 Bigl operatorname mathbb E X 4 4 3 operatorname mathbb E X 3 4 3 operatorname mathbb E X 2 4 operatorname mathbb E X 1 4 Bigr nbsp Note that the coefficients of the r th L moment are the same as in the r th term of the binomial transform as used in the r order finite difference finite analog to the derivative The first two of these L moments have conventional names l1 displaystyle lambda 1 nbsp is the mean L mean or L location l2 displaystyle lambda 2 nbsp is the L scale The L scale is equal to half the Mean absolute difference 5 Sample L moments editThe sample L moments can be computed as the population L moments of the sample summing over r element subsets of the sample x1 lt lt xj lt lt xr displaystyle left x 1 lt cdots lt x j lt cdots lt x r right nbsp hence averaging by dividing by the binomial coefficient lr 1 r nr x1 lt lt xj lt lt xr 1 r j r 1j xj displaystyle lambda r frac 1 r cdot tbinom n r sum x 1 lt cdots lt x j lt cdots lt x r 1 r j binom r 1 j x j nbsp Grouping these by order statistic counts the number of ways an element of an n element sample can be the j th element of an r element subset and yields formulas of the form below Direct estimators for the first four L moments in a finite sample of n observations are 6 ℓ1 1 n1 i 1n x i displaystyle ell 1 frac 1 tbinom n 1 sum i 1 n x i nbsp ℓ2 1 2 n2 i 1n i 11 n i1 x i displaystyle ell 2 frac 1 2 cdot tbinom n 2 sum i 1 n Bigl tbinom i 1 1 tbinom n i 1 Bigr x i nbsp ℓ3 1 3 n3 i 1n i 12 2 i 11 n i1 n i2 x i displaystyle ell 3 frac 1 3 cdot tbinom n 3 sum i 1 n Bigl tbinom i 1 2 2 tbinom i 1 1 tbinom n i 1 tbinom n i 2 Bigr x i nbsp ℓ4 1 4 n4 i 1n i 13 3 i 12 n i1 3 i 11 n i2 n i3 x i displaystyle ell 4 frac 1 4 cdot tbinom n 4 sum i 1 n Bigl tbinom i 1 3 3 tbinom i 1 2 tbinom n i 1 3 tbinom i 1 1 tbinom n i 2 tbinom n i 3 Bigr x i nbsp where x i is the i th order statistic and displaystyle tbinom boldsymbol cdot boldsymbol cdot nbsp is a binomial coefficient Sample L moments can also be defined indirectly in terms of probability weighted moments 1 7 8 which leads to a more efficient algorithm for their computation 6 9 L moment ratios editA set of L moment ratios or scaled L moments is defined by tr lr l2 r 3 4 displaystyle tau r lambda r lambda 2 qquad r 3 4 dots nbsp The most useful of these are t3 displaystyle tau 3 nbsp called the L skewness and t4 displaystyle tau 4 nbsp the L kurtosis L moment ratios lie within the interval 1 1 Tighter bounds can be found for some specific L moment ratios in particular the L kurtosis t4 displaystyle tau 4 nbsp lies in 1 4 1 and 1 4 5 t32 1 t4 lt 1 displaystyle tfrac 1 4 left 5 tau 3 2 1 right leq tau 4 lt 1 nbsp 1 A quantity analogous to the coefficient of variation but based on L moments can also be defined t l2 l1 displaystyle tau lambda 2 lambda 1 nbsp which is called the coefficient of L variation or L CV For a non negative random variable this lies in the interval 0 1 1 and is identical to the Gini coefficient 10 Related quantities editL moments are statistical quantities that are derived from probability weighted moments 11 PWM which were defined earlier 1979 7 PWM are used to efficiently estimate the parameters of distributions expressable in inverse form such as the Gumbel 8 the Tukey lambda and the Wakeby distributions Usage editThere are two common ways that L moments are used in both cases analogously to the conventional moments As summary statistics for data To derive estimators for the parameters of probability distributions applying the method of moments to the L moments rather than conventional moments 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 1 Some appearances of L moments in the statistical literature include the book by David amp Nagaraja 2003 Section 9 9 12 and a number of papers 10 13 14 15 16 17 A number of favourable comparisons of L moments with ordinary moments have been reported 18 19 Values for some common distributions editThe table below gives expressions for the first two L moments and numerical values of the first two L moment ratios of some common continuous probability distributions with constant L moment ratios 1 5 More complex expressions have been derived for some further distributions for which the L moment ratios vary with one or more of the distributional parameters including the log normal Gamma generalized Pareto generalized extreme value and generalized logistic distributions 1 Distribution Parameters mean l1 L scale l2 L skewness t3 L kurtosis t4Uniform a b 1 2 a b 1 6 b a 0 0Logistic m s m s 0 1 6 0 1667Normal m s2 m s p 0 30 8 m p 9 0 1226Laplace m b m 3 4 b 0 1 3 2 0 2357Student s t 2 d f n 2 0 p 2 2 1 111 0 3 8 0 375Student s t 4 d f n 4 0 15 64 p 0 7363 0 111 512 0 2168Exponential l 1 l 1 2 l 1 3 0 3333 1 6 0 1667Gumbel m b m g e b b log2 3 2 log2 3 3 0 1699 16 10 log2 3 0 1504The 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 g e is the Euler Mascheroni constant 0 5772 1566 4901 Extensions editTrimmed L moments are generalizations of L moments that give zero weight to extreme observations They are therefore more robust to the presence of outliers and unlike L moments they may be well defined for distributions for which the mean does not exist such as the Cauchy distribution 20 See also editL estimatorReferences edit a b c d e f g h Hosking J R M 1990 L moments analysis and estimation of distributions using linear combinations of order statistics Journal of the Royal Statistical Society Series B 52 1 105 124 JSTOR 2345653 Hosking J R M 1992 Moments or L moments An example comparing two measures of distributional shape The American Statistician 46 3 186 189 doi 10 2307 2685210 JSTOR 2685210 Hosking J R M 2006 On the characterization of distributions by their L moments Journal of Statistical Planning and Inference 136 193 198 doi 10 1016 j jspi 2004 06 004 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 ISBN 1 463 50841 7 a b Jones M C 2002 Student s simplest distribution Journal of the Royal Statistical Society Series D 51 1 41 49 doi 10 1111 1467 9884 00297 JSTOR 3650389 a b Wang Q J 1996 Direct sample estimators of L moments Water Resources Research 32 12 3617 3619 doi 10 1029 96WR02675 a b Greenwood J A Landwehr J M Matalas N C Wallis J R 1979 Probability weighted moments Definition and relation to parameters of several distributions expressed in inverse form PDF Water Resources Research 15 5 1049 1054 doi 10 1029 WR015i005p01049 S2CID 121955257 Archived from the original PDF on 2020 02 10 a b Landwehr J M Matalas N C Wallis J R 1979 Probability weighted moments compared with some traditional techniques in estimating Gumbel parameters and quantiles Water Resources Research 15 5 1055 1064 doi 10 1029 WR015i005p01055 L moments NIST Dataplot itl nist gov documentation National Institute of Standards and Technology 6 January 2006 Retrieved 19 January 2013 a b Valbuena R Maltamo M Mehtatalo L Packalen P 2017 Key structural features of Boreal forests may be detected directly using L moments from airborne lidar data Remote Sensing of Environment 194 437 446 doi 10 1016 j rse 2016 10 024 Hosking JRM Wallis JR 2005 Regional Frequency Analysis An Approach Based on L moments Cambridge University Press p 3 ISBN 978 0521019408 Retrieved 22 January 2013 David H A Nagaraja H N 2003 Order Statistics 3rd ed Wiley ISBN 978 0 471 38926 2 Serfling R Xiao P 2007 A contribution to multivariate L moments L comoment matrices Journal of Multivariate Analysis 98 9 1765 1781 CiteSeerX 10 1 1 62 4288 doi 10 1016 j jmva 2007 01 008 Delicado P Goria M N 2008 A small sample comparison of maximum likelihood moments and L moments methods for the asymmetric exponential power distribution Computational Statistics amp Data Analysis 52 3 1661 1673 doi 10 1016 j csda 2007 05 021 Alkasasbeh M R Raqab M Z 2009 Estimation of the generalized logistic distribution parameters comparative study Statistical Methodology 6 3 262 279 doi 10 1016 j stamet 2008 10 001 Jones M C 2004 On some expressions for variance covariance skewness and L moments Journal of Statistical Planning and Inference 126 1 97 106 doi 10 1016 j jspi 2003 09 001 Jones M C 2009 Kumaraswamy s distribution A beta type distribution with some tractability advantages Statistical Methodology 6 1 70 81 doi 10 1016 j stamet 2008 04 001 Royston P 1992 Which measures of skewness and kurtosis are best Statistics in Medicine 11 3 333 343 doi 10 1002 sim 4780110306 PMID 1609174 Ulrych T J Velis D R Woodbury A D Sacchi M D 2000 L moments and C moments Stochastic Environmental Research and Risk Assessment 14 1 50 68 doi 10 1007 s004770050004 S2CID 120542594 Elamir Elsayed A H Seheult Allan H 2003 Trimmed L moments Computational Statistics amp Data Analysis 43 3 299 314 doi 10 1016 S0167 9473 02 00250 5 External links editThe L moments page Jonathan R M Hosking IBM Research L Moments Dataplot reference manual vol 1 auxiliary chapter National Institute of Standards and Technology 2006 Accessed 2010 05 25 Lmo lightweight Python includes functions for fast calculation of L moments trimmed L moments and multivariate L comoments Retrieved from https en wikipedia org w index php title L moment amp oldid 1190358507, wikipedia, wiki, book, books, library,

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