fbpx
Wikipedia

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.

Example distribution with positive skewness. These data are from experiments on wheat grass growth.

For a unimodal distribution, negative skew commonly indicates that the tail is on the left side of the distribution, and positive skew indicates that the tail is on the right. In cases where one tail is long but the other tail is fat, skewness does not obey a simple rule. For example, a zero value means that the tails on both sides of the mean balance out overall; this is the case for a symmetric distribution, but can also be true for an asymmetric distribution where one tail is long and thin, and the other is short but fat.

Introduction

Consider the two distributions in the figure just below. Within each graph, the values on the right side of the distribution taper differently from the values on the left side. These tapering sides are called tails, and they provide a visual means to determine which of the two kinds of skewness a distribution has:

  1. negative skew: The left tail is longer; the mass of the distribution is concentrated on the right of the figure. The distribution is said to be left-skewed, left-tailed, or skewed to the left, despite the fact that the curve itself appears to be skewed or leaning to the right; left instead refers to the left tail being drawn out and, often, the mean being skewed to the left of a typical center of the data. A left-skewed distribution usually appears as a right-leaning curve.[1]
  2. positive skew: The right tail is longer; the mass of the distribution is concentrated on the left of the figure. The distribution is said to be right-skewed, right-tailed, or skewed to the right, despite the fact that the curve itself appears to be skewed or leaning to the left; right instead refers to the right tail being drawn out and, often, the mean being skewed to the right of a typical center of the data. A right-skewed distribution usually appears as a left-leaning curve.[1]

 

Skewness in a data series may sometimes be observed not only graphically but by simple inspection of the values. For instance, consider the numeric sequence (49, 50, 51), whose values are evenly distributed around a central value of 50. We can transform this sequence into a negatively skewed distribution by adding a value far below the mean, which is probably a negative outlier, e.g. (40, 49, 50, 51). Therefore, the mean of the sequence becomes 47.5, and the median is 49.5. Based on the formula of nonparametric skew, defined as   the skew is negative. Similarly, we can make the sequence positively skewed by adding a value far above the mean, which is probably a positive outlier, e.g. (49, 50, 51, 60), where the mean is 52.5, and the median is 50.5.

As mentioned earlier, a unimodal distribution with zero value of skewness does not imply that this distribution is symmetric necessarily. However, a symmetric unimodal or multimodal distribution always has zero skewness.

 
Example of an asymmetric distribution with zero skewness. This figure serves as a counterexample that zero skewness does not imply symmetric distribution necessarily. (Skewness was calculated by Pearson's moment coefficient of skewness.)

Relationship of mean and median

The skewness is not directly related to the relationship between the mean and median: a distribution with negative skew can have its mean greater than or less than the median, and likewise for positive skew.[2]

 
A general relationship of mean and median under differently skewed unimodal distribution

In the older notion of nonparametric skew, defined as   where   is the mean,   is the median, and   is the standard deviation, the skewness is defined in terms of this relationship: positive/right nonparametric skew means the mean is greater than (to the right of) the median, while negative/left nonparametric skew means the mean is less than (to the left of) the median. However, the modern definition of skewness and the traditional nonparametric definition do not always have the same sign: while they agree for some families of distributions, they differ in some of the cases, and conflating them is misleading.

If the distribution is symmetric, then the mean is equal to the median, and the distribution has zero skewness.[3] If the distribution is both symmetric and unimodal, then the mean = median = mode. This is the case of a coin toss or the series 1,2,3,4,... Note, however, that the converse is not true in general, i.e. zero skewness (defined below) does not imply that the mean is equal to the median.

A 2005 journal article points out:[2]

Many textbooks teach a rule of thumb stating that the mean is right of the median under right skew, and left of the median under left skew. This rule fails with surprising frequency. It can fail in multimodal distributions, or in distributions where one tail is long but the other is heavy. Most commonly, though, the rule fails in discrete distributions where the areas to the left and right of the median are not equal. Such distributions not only contradict the textbook relationship between mean, median, and skew, they also contradict the textbook interpretation of the median.

 
Distribution of adult residents across US households

For example, in the distribution of adult residents across US households, the skew is to the right. However, since the majority of cases is less than or equal to the mode, which is also the median, the mean sits in the heavier left tail. As a result, the rule of thumb that the mean is right of the median under right skew failed.[2]

Definition

Fisher's moment coefficient of skewness

The skewness of a random variable X is the third standardized moment  , defined as:[4][5]

 

where μ is the mean, σ is the standard deviation, E is the expectation operator, μ3 is the third central moment, and κt are the t-th cumulants. It is sometimes referred to as Pearson's moment coefficient of skewness,[5] or simply the moment coefficient of skewness,[4] but should not be confused with Pearson's other skewness statistics (see below). The last equality expresses skewness in terms of the ratio of the third cumulant κ3 to the 1.5th power of the second cumulant κ2. This is analogous to the definition of kurtosis as the fourth cumulant normalized by the square of the second cumulant. The skewness is also sometimes denoted Skew[X].

If σ is finite, μ is finite too and skewness can be expressed in terms of the non-central moment E[X3] by expanding the previous formula,

 

Examples

Skewness can be infinite, as when

 

where the third cumulants are infinite, or as when

 

where the third cumulant is undefined.

Examples of distributions with finite skewness include the following.

Sample skewness

For a sample of n values, two natural estimators of the population skewness are[6]

 

and

 

where   is the sample mean, s is the sample standard deviation, m2 is the (biased) sample second central moment, and m3 is the sample third central moment.[6]   is a method of moments estimator.

Another common definition of the sample skewness is[6][7]

 

where   is the unique symmetric unbiased estimator of the third cumulant and   is the symmetric unbiased estimator of the second cumulant (i.e. the sample variance). This adjusted Fisher–Pearson standardized moment coefficient   is the version found in Excel and several statistical packages including Minitab, SAS and SPSS.[7]

Under the assumption that the underlying random variable   is normally distributed, it can be shown that all three ratios  ,   and   are unbiased and consistent estimators of the population skewness  , with  , i.e., their distributions converge to a normal distribution with mean 0 and variance 6 (Fisher, 1930).[6] The variance of the sample skewness is thus approximately   for sufficiently large samples. More precisely, in a random sample of size n from a normal distribution,[8][9]

 

In normal samples,   has the smaller variance of the three estimators, with[6]

 

For non-normal distributions,  ,   and   are generally biased estimators of the population skewness  ; their expected values can even have the opposite sign from the true skewness. For instance, a mixed distribution consisting of very thin Gaussians centred at −99, 0.5, and 2 with weights 0.01, 0.66, and 0.33 has a skewness   of about −9.77, but in a sample of 3   has an expected value of about 0.32, since usually all three samples are in the positive-valued part of the distribution, which is skewed the other way.

Applications

Skewness is a descriptive statistic that can be used in conjunction with the histogram and the normal quantile plot to characterize the data or distribution.

Skewness indicates the direction and relative magnitude of a distribution's deviation from the normal distribution.

With pronounced skewness, standard statistical inference procedures such as a confidence interval for a mean will be not only incorrect, in the sense that the true coverage level will differ from the nominal (e.g., 95%) level, but they will also result in unequal error probabilities on each side.

Skewness can be used to obtain approximate probabilities and quantiles of distributions (such as value at risk in finance) via the Cornish-Fisher expansion.

Many models assume normal distribution; i.e., data are symmetric about the mean. The normal distribution has a skewness of zero. But in reality, data points may not be perfectly symmetric. So, an understanding of the skewness of the dataset indicates whether deviations from the mean are going to be positive or negative.

D'Agostino's K-squared test is a goodness-of-fit normality test based on sample skewness and sample kurtosis.

Other measures of skewness

 
Comparison of mean, median and mode of two log-normal distributions with the same medians and different skewnesses.

Other measures of skewness have been used, including simpler calculations suggested by Karl Pearson[10] (not to be confused with Pearson's moment coefficient of skewness, see above). These other measures are:

Pearson's first skewness coefficient (mode skewness)

The Pearson mode skewness,[11] or first skewness coefficient, is defined as

meanmode/standard deviation.

Pearson's second skewness coefficient (median skewness)

The Pearson median skewness, or second skewness coefficient,[12][13] is defined as

3 (meanmedian)/standard deviation.

Which is a simple multiple of the nonparametric skew.

Quantile-based measures

Bowley's measure of skewness (from 1901),[14][15] also called Yule's coefficient (from 1912)[16][17] is defined as:

 

where Q is the quantile function (i.e., the inverse of the cumulative distribution function). The numerator is difference between the average of the upper and lower quartiles (a measure of location) and the median (another measure of location), while the denominator is the semi-interquartile range  , which for symmetric distributions is the MAD measure of dispersion.

Other names for this measure are Galton's measure of skewness,[18] the Yule–Kendall index[19] and the quartile skewness,[20]

Similarly, Kelly's measure of skewness is defined as[21]

 

A more general formulation of a skewness function was described by Groeneveld, R. A. and Meeden, G. (1984):[22][23][24]

 

The function γ(u) satisfies −1 ≤ γ(u) ≤ 1 and is well defined without requiring the existence of any moments of the distribution.[22] Bowley's measure of skewness is γ(u) evaluated at u = 3/4 while Kelly's measure of skewness is γ(u) evaluated at u = 9/10. This definition leads to a corresponding overall measure of skewness[23] defined as the supremum of this over the range 1/2 ≤ u < 1. Another measure can be obtained by integrating the numerator and denominator of this expression.[22]

Quantile-based skewness measures are at first glance easy to interpret, but they often show significantly larger sample variations than moment-based methods. This means that often samples from a symmetric distribution (like the uniform distribution) have a large quantile-based skewness, just by chance.

Groeneveld and Meeden's coefficient

Groeneveld and Meeden have suggested, as an alternative measure of skewness,[22]

 

where μ is the mean, ν is the median, |...| is the absolute value, and E() is the expectation operator. This is closely related in form to Pearson's second skewness coefficient.

L-moments

Use of L-moments in place of moments provides a measure of skewness known as the L-skewness.[25]

Distance skewness

A value of skewness equal to zero does not imply that the probability distribution is symmetric. Thus there is a need for another measure of asymmetry that has this property: such a measure was introduced in 2000.[26] It is called distance skewness and denoted by dSkew. If X is a random variable taking values in the d-dimensional Euclidean space, X has finite expectation, X' is an independent identically distributed copy of X, and   denotes the norm in the Euclidean space, then a simple measure of asymmetry with respect to location parameter θ is

 

and dSkew(X) := 0 for X = θ (with probability 1). Distance skewness is always between 0 and 1, equals 0 if and only if X is diagonally symmetric with respect to θ (X and 2θ−X have the same probability distribution) and equals 1 if and only if X is a constant c ( ) with probability one.[27] Thus there is a simple consistent statistical test of diagonal symmetry based on the sample distance skewness:

 

Medcouple

The medcouple is a scale-invariant robust measure of skewness, with a breakdown point of 25%.[28] It is the median of the values of the kernel function

 

taken over all couples   such that  , where   is the median of the sample  . It can be seen as the median of all possible quantile skewness measures.

See also

References

Citations

  1. ^ a b Illowsky, Barbara; Dean, Susan (27 March 2020). "2.6 Skewness and the Mean, Median, and Mode - Statistics". OpenStax. Retrieved 21 December 2022.
  2. ^ a b c von Hippel, Paul T. (2005). . Journal of Statistics Education. 13 (2). Archived from the original on 20 February 2016.
  3. ^ "1.3.5.11. Measures of Skewness and Kurtosis". NIST. Retrieved 18 March 2012.
  4. ^ a b "Measures of Shape: Skewness and Kurtosis", 2008–2016 by Stan Brown, Oak Road Systems
  5. ^ a b Pearson's moment coefficient of skewness, FXSolver.com
  6. ^ a b c d e Joanes, D. N.; Gill, C. A. (1998). "Comparing measures of sample skewness and kurtosis". Journal of the Royal Statistical Society, Series D. 47 (1): 183–189. doi:10.1111/1467-9884.00122.
  7. ^ a b Doane, David P., and Lori E. Seward. "Measuring skewness: a forgotten statistic." Journal of Statistics Education 19.2 (2011): 1-18. (Page 7)
  8. ^ Duncan Cramer (1997) Fundamental Statistics for Social Research. Routledge. ISBN 9780415172042 (p 85)
  9. ^ Kendall, M.G.; Stuart, A. (1969) The Advanced Theory of Statistics, Volume 1: Distribution Theory, 3rd Edition, Griffin. ISBN 0-85264-141-9 (Ex 12.9)
  10. ^ (PDF). Archived from the original (PDF) on 5 July 2010. Retrieved 9 April 2010.{{cite web}}: CS1 maint: archived copy as title (link)
  11. ^ Weisstein, Eric W. "Pearson Mode Skewness". MathWorld.
  12. ^ Weisstein, Eric W. "Pearson's skewness coefficients". MathWorld.
  13. ^ Doane, David P.; Seward, Lori E. (2011). "Measuring Skewness: A Forgotten Statistic?" (PDF). Journal of Statistics Education. 19 (2): 1–18. doi:10.1080/10691898.2011.11889611.
  14. ^ Bowley, A. L. (1901). Elements of Statistics, P.S. King & Son, Laondon. Or in a later edition: BOWLEY, AL. "Elements of Statistics, 4th Edn (New York, Charles Scribner)."(1920).
  15. ^ Kenney JF and Keeping ES (1962) Mathematics of Statistics, Pt. 1, 3rd ed., Van Nostrand, (page 102).
  16. ^ Yule, George Udny. An introduction to the theory of statistics. C. Griffin, limited, 1912.
  17. ^ Groeneveld, Richard A (1991). "An influence function approach to describing the skewness of a distribution". The American Statistician. 45 (2): 97–102. doi:10.2307/2684367. JSTOR 2684367.
  18. ^ Johnson, NL, Kotz, S & Balakrishnan, N (1994) p. 3 and p. 40
  19. ^ Wilks DS (1995) Statistical Methods in the Atmospheric Sciences, p 27. Academic Press. ISBN 0-12-751965-3
  20. ^ Weisstein, Eric W. "Skewness". mathworld.wolfram.com. Retrieved 21 November 2019.
  21. ^ A.W.L. Pubudu Thilan. "Applied Statistics I: Chapter 5: Measures of skewness" (PDF). University of Ruhuna. p. 21.
  22. ^ a b c d Groeneveld, R.A.; Meeden, G. (1984). "Measuring Skewness and Kurtosis". The Statistician. 33 (4): 391–399. doi:10.2307/2987742. JSTOR 2987742.
  23. ^ a b MacGillivray (1992)
  24. ^ Hinkley DV (1975) "On power transformations to symmetry", Biometrika, 62, 101–111
  25. ^ 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.
  26. ^ Szekely, G.J. (2000). "Pre-limit and post-limit theorems for statistics", In: Statistics for the 21st Century (eds. C. R. Rao and G. J. Szekely), Dekker, New York, pp. 411–422.
  27. ^ Szekely, G. J. and Mori, T. F. (2001) "A characteristic measure of asymmetry and its application for testing diagonal symmetry", Communications in Statistics – Theory and Methods 30/8&9, 1633–1639.
  28. ^ G. Brys; M. Hubert; A. Struyf (November 2004). "A Robust Measure of Skewness". Journal of Computational and Graphical Statistics. 13 (4): 996–1017. doi:10.1198/106186004X12632. S2CID 120919149.

Sources

  • Johnson, NL; Kotz, S; Balakrishnan, N (1994). Continuous Univariate Distributions. Vol. 1 (2 ed.). Wiley. ISBN 0-471-58495-9.
  • MacGillivray, HL (1992). "Shape properties of the g- and h- and Johnson families". Communications in Statistics - Theory and Methods. 21 (5): 1244–1250. doi:10.1080/03610929208830842.
  • Premaratne, G., Bera, A. K. (2001). Adjusting the Tests for Skewness and Kurtosis for Distributional Misspecifications. Working Paper Number 01-0116, University of Illinois. Forthcoming in Comm in Statistics, Simulation and Computation. 2016 1-15
  • Premaratne, G., Bera, A. K. (2000). Modeling Asymmetry and Excess Kurtosis in Stock Return Data. Office of Research Working Paper Number 00-0123, University of Illinois.
  • Skewness Measures for the Weibull Distribution

External links

  • "Asymmetry coefficient", Encyclopedia of Mathematics, EMS Press, 2001 [1994]
  • An Asymmetry Coefficient for Multivariate Distributions by Michel Petitjean
  • On More Robust Estimation of Skewness and Kurtosis Comparison of skew estimators by Kim and White.
  • Closed-skew Distributions — Simulation, Inversion and Parameter Estimation

skewness, planarity, measure, graph, theory, graph, skewness, probability, theory, statistics, skewness, measure, asymmetry, probability, distribution, real, valued, random, variable, about, mean, skewness, value, positive, zero, negative, undefined, example, . For the planarity measure in graph theory see Graph 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 Example distribution with positive skewness These data are from experiments on wheat grass growth For a unimodal distribution negative skew commonly indicates that the tail is on the left side of the distribution and positive skew indicates that the tail is on the right In cases where one tail is long but the other tail is fat skewness does not obey a simple rule For example a zero value means that the tails on both sides of the mean balance out overall this is the case for a symmetric distribution but can also be true for an asymmetric distribution where one tail is long and thin and the other is short but fat Contents 1 Introduction 2 Relationship of mean and median 3 Definition 3 1 Fisher s moment coefficient of skewness 3 2 Examples 3 3 Sample skewness 4 Applications 5 Other measures of skewness 5 1 Pearson s first skewness coefficient mode skewness 5 2 Pearson s second skewness coefficient median skewness 5 3 Quantile based measures 5 4 Groeneveld and Meeden s coefficient 5 5 L moments 5 6 Distance skewness 5 7 Medcouple 6 See also 7 References 7 1 Citations 7 2 Sources 8 External linksIntroduction EditConsider the two distributions in the figure just below Within each graph the values on the right side of the distribution taper differently from the values on the left side These tapering sides are called tails and they provide a visual means to determine which of the two kinds of skewness a distribution has negative skew The left tail is longer the mass of the distribution is concentrated on the right of the figure The distribution is said to be left skewed left tailed or skewed to the left despite the fact that the curve itself appears to be skewed or leaning to the right left instead refers to the left tail being drawn out and often the mean being skewed to the left of a typical center of the data A left skewed distribution usually appears as a right leaning curve 1 positive skew The right tail is longer the mass of the distribution is concentrated on the left of the figure The distribution is said to be right skewed right tailed or skewed to the right despite the fact that the curve itself appears to be skewed or leaning to the left right instead refers to the right tail being drawn out and often the mean being skewed to the right of a typical center of the data A right skewed distribution usually appears as a left leaning curve 1 Skewness in a data series may sometimes be observed not only graphically but by simple inspection of the values For instance consider the numeric sequence 49 50 51 whose values are evenly distributed around a central value of 50 We can transform this sequence into a negatively skewed distribution by adding a value far below the mean which is probably a negative outlier e g 40 49 50 51 Therefore the mean of the sequence becomes 47 5 and the median is 49 5 Based on the formula of nonparametric skew defined as m n s displaystyle mu nu sigma the skew is negative Similarly we can make the sequence positively skewed by adding a value far above the mean which is probably a positive outlier e g 49 50 51 60 where the mean is 52 5 and the median is 50 5 As mentioned earlier a unimodal distribution with zero value of skewness does not imply that this distribution is symmetric necessarily However a symmetric unimodal or multimodal distribution always has zero skewness Example of an asymmetric distribution with zero skewness This figure serves as a counterexample that zero skewness does not imply symmetric distribution necessarily Skewness was calculated by Pearson s moment coefficient of skewness Relationship of mean and median EditThe skewness is not directly related to the relationship between the mean and median a distribution with negative skew can have its mean greater than or less than the median and likewise for positive skew 2 A general relationship of mean and median under differently skewed unimodal distribution In the older notion of nonparametric skew defined as m n s displaystyle mu nu sigma where m displaystyle mu is the mean n displaystyle nu is the median and s displaystyle sigma is the standard deviation the skewness is defined in terms of this relationship positive right nonparametric skew means the mean is greater than to the right of the median while negative left nonparametric skew means the mean is less than to the left of the median However the modern definition of skewness and the traditional nonparametric definition do not always have the same sign while they agree for some families of distributions they differ in some of the cases and conflating them is misleading If the distribution is symmetric then the mean is equal to the median and the distribution has zero skewness 3 If the distribution is both symmetric and unimodal then the mean median mode This is the case of a coin toss or the series 1 2 3 4 Note however that the converse is not true in general i e zero skewness defined below does not imply that the mean is equal to the median A 2005 journal article points out 2 Many textbooks teach a rule of thumb stating that the mean is right of the median under right skew and left of the median under left skew This rule fails with surprising frequency It can fail in multimodal distributions or in distributions where one tail is long but the other is heavy Most commonly though the rule fails in discrete distributions where the areas to the left and right of the median are not equal Such distributions not only contradict the textbook relationship between mean median and skew they also contradict the textbook interpretation of the median Distribution of adult residents across US households For example in the distribution of adult residents across US households the skew is to the right However since the majority of cases is less than or equal to the mode which is also the median the mean sits in the heavier left tail As a result the rule of thumb that the mean is right of the median under right skew failed 2 Definition EditFisher s moment coefficient of skewness Edit The skewness of a random variable X is the third standardized moment m 3 displaystyle tilde mu 3 defined as 4 5 m 3 E X m s 3 m 3 s 3 E X m 3 E X m 2 3 2 k 3 k 2 3 2 displaystyle tilde mu 3 operatorname E left left frac X mu sigma right 3 right frac mu 3 sigma 3 frac operatorname E left X mu 3 right operatorname E left X mu 2 right 3 2 frac kappa 3 kappa 2 3 2 where m is the mean s is the standard deviation E is the expectation operator m3 is the third central moment and kt are the t th cumulants It is sometimes referred to as Pearson s moment coefficient of skewness 5 or simply the moment coefficient of skewness 4 but should not be confused with Pearson s other skewness statistics see below The last equality expresses skewness in terms of the ratio of the third cumulant k3 to the 1 5th power of the second cumulant k2 This is analogous to the definition of kurtosis as the fourth cumulant normalized by the square of the second cumulant The skewness is also sometimes denoted Skew X If s is finite m is finite too and skewness can be expressed in terms of the non central moment E X3 by expanding the previous formula m 3 E X m s 3 E X 3 3 m E X 2 3 m 2 E X m 3 s 3 E X 3 3 m E X 2 m E X m 3 s 3 E X 3 3 m s 2 m 3 s 3 displaystyle begin aligned tilde mu 3 amp operatorname E left left frac X mu sigma right 3 right amp frac operatorname E X 3 3 mu operatorname E X 2 3 mu 2 operatorname E X mu 3 sigma 3 amp frac operatorname E X 3 3 mu operatorname E X 2 mu operatorname E X mu 3 sigma 3 amp frac operatorname E X 3 3 mu sigma 2 mu 3 sigma 3 end aligned Examples Edit Skewness can be infinite as when Pr X gt x x 2 for x gt 1 Pr X lt 1 0 displaystyle Pr left X gt x right x 2 mbox for x gt 1 Pr X lt 1 0 where the third cumulants are infinite or as when Pr X lt x 1 x 3 2 for negative x and Pr X gt x 1 x 3 2 for positive x displaystyle Pr X lt x 1 x 3 2 mbox for negative x mbox and Pr X gt x 1 x 3 2 mbox for positive x where the third cumulant is undefined Examples of distributions with finite skewness include the following A normal distribution and any other symmetric distribution with finite third moment has a skewness of 0 A half normal distribution has a skewness just below 1 An exponential distribution has a skewness of 2 A lognormal distribution can have a skewness of any positive value depending on its parametersSample skewness Edit For a sample of n values two natural estimators of the population skewness are 6 b 1 m 3 s 3 1 n i 1 n x i x 3 1 n 1 i 1 n x i x 2 3 2 displaystyle b 1 frac m 3 s 3 frac tfrac 1 n sum i 1 n x i overline x 3 left tfrac 1 n 1 sum i 1 n x i overline x 2 right 3 2 and g 1 m 3 m 2 3 2 1 n i 1 n x i x 3 1 n i 1 n x i x 2 3 2 displaystyle g 1 frac m 3 m 2 3 2 frac tfrac 1 n sum i 1 n x i overline x 3 left tfrac 1 n sum i 1 n x i overline x 2 right 3 2 where x displaystyle overline x is the sample mean s is the sample standard deviation m2 is the biased sample second central moment and m3 is the sample third central moment 6 g 1 displaystyle g 1 is a method of moments estimator Another common definition of the sample skewness is 6 7 G 1 k 3 k 2 3 2 n 2 n 1 n 2 b 1 n n 1 n 2 g 1 displaystyle begin aligned G 1 amp frac k 3 k 2 3 2 frac n 2 n 1 n 2 b 1 frac sqrt n n 1 n 2 g 1 end aligned where k 3 displaystyle k 3 is the unique symmetric unbiased estimator of the third cumulant and k 2 s 2 displaystyle k 2 s 2 is the symmetric unbiased estimator of the second cumulant i e the sample variance This adjusted Fisher Pearson standardized moment coefficient G 1 displaystyle G 1 is the version found in Excel and several statistical packages including Minitab SAS and SPSS 7 Under the assumption that the underlying random variable X displaystyle X is normally distributed it can be shown that all three ratios b 1 displaystyle b 1 g 1 displaystyle g 1 and G 1 displaystyle G 1 are unbiased and consistent estimators of the population skewness g 1 0 displaystyle gamma 1 0 with n b 1 d N 0 6 displaystyle sqrt n b 1 xrightarrow d N 0 6 i e their distributions converge to a normal distribution with mean 0 and variance 6 Fisher 1930 6 The variance of the sample skewness is thus approximately 6 n displaystyle 6 n for sufficiently large samples More precisely in a random sample of size n from a normal distribution 8 9 var G 1 6 n n 1 n 2 n 1 n 3 displaystyle operatorname var G 1 frac 6n n 1 n 2 n 1 n 3 In normal samples b 1 displaystyle b 1 has the smaller variance of the three estimators with 6 var b 1 lt var g 1 lt var G 1 displaystyle operatorname var b 1 lt operatorname var g 1 lt operatorname var G 1 For non normal distributions b 1 displaystyle b 1 g 1 displaystyle g 1 and G 1 displaystyle G 1 are generally biased estimators of the population skewness g 1 displaystyle gamma 1 their expected values can even have the opposite sign from the true skewness For instance a mixed distribution consisting of very thin Gaussians centred at 99 0 5 and 2 with weights 0 01 0 66 and 0 33 has a skewness g 1 displaystyle gamma 1 of about 9 77 but in a sample of 3 G 1 displaystyle G 1 has an expected value of about 0 32 since usually all three samples are in the positive valued part of the distribution which is skewed the other way Applications EditSkewness is a descriptive statistic that can be used in conjunction with the histogram and the normal quantile plot to characterize the data or distribution Skewness indicates the direction and relative magnitude of a distribution s deviation from the normal distribution With pronounced skewness standard statistical inference procedures such as a confidence interval for a mean will be not only incorrect in the sense that the true coverage level will differ from the nominal e g 95 level but they will also result in unequal error probabilities on each side Skewness can be used to obtain approximate probabilities and quantiles of distributions such as value at risk in finance via the Cornish Fisher expansion Many models assume normal distribution i e data are symmetric about the mean The normal distribution has a skewness of zero But in reality data points may not be perfectly symmetric So an understanding of the skewness of the dataset indicates whether deviations from the mean are going to be positive or negative D Agostino s K squared test is a goodness of fit normality test based on sample skewness and sample kurtosis Other measures of skewness Edit Comparison of mean median and mode of two log normal distributions with the same medians and different skewnesses Other measures of skewness have been used including simpler calculations suggested by Karl Pearson 10 not to be confused with Pearson s moment coefficient of skewness see above These other measures are Pearson s first skewness coefficient mode skewness Edit The Pearson mode skewness 11 or first skewness coefficient is defined as mean mode standard deviation Pearson s second skewness coefficient median skewness Edit The Pearson median skewness or second skewness coefficient 12 13 is defined as 3 mean median standard deviation Which is a simple multiple of the nonparametric skew Quantile based measures Edit Bowley s measure of skewness from 1901 14 15 also called Yule s coefficient from 1912 16 17 is defined as Q 3 4 Q 1 4 2 Q 1 2 Q 3 4 Q 1 4 2 Q 3 4 Q 1 4 2 Q 1 2 Q 3 4 Q 1 4 displaystyle frac frac Q 3 4 Q 1 4 2 Q 1 2 frac Q 3 4 Q 1 4 2 frac Q 3 4 Q 1 4 2 Q 1 2 Q 3 4 Q 1 4 where Q is the quantile function i e the inverse of the cumulative distribution function The numerator is difference between the average of the upper and lower quartiles a measure of location and the median another measure of location while the denominator is the semi interquartile range Q 3 4 Q 1 4 2 displaystyle Q 3 4 Q 1 4 2 which for symmetric distributions is the MAD measure of dispersion Other names for this measure are Galton s measure of skewness 18 the Yule Kendall index 19 and the quartile skewness 20 Similarly Kelly s measure of skewness is defined as 21 Q 9 10 Q 1 10 2 Q 1 2 Q 9 10 Q 1 10 displaystyle frac Q 9 10 Q 1 10 2 Q 1 2 Q 9 10 Q 1 10 A more general formulation of a skewness function was described by Groeneveld R A and Meeden G 1984 22 23 24 g u Q u Q 1 u 2 Q 1 2 Q u Q 1 u displaystyle gamma u frac Q u Q 1 u 2Q 1 2 Q u Q 1 u The function g u satisfies 1 g u 1 and is well defined without requiring the existence of any moments of the distribution 22 Bowley s measure of skewness is g u evaluated at u 3 4 while Kelly s measure of skewness is g u evaluated at u 9 10 This definition leads to a corresponding overall measure of skewness 23 defined as the supremum of this over the range 1 2 u lt 1 Another measure can be obtained by integrating the numerator and denominator of this expression 22 Quantile based skewness measures are at first glance easy to interpret but they often show significantly larger sample variations than moment based methods This means that often samples from a symmetric distribution like the uniform distribution have a large quantile based skewness just by chance Groeneveld and Meeden s coefficient Edit Groeneveld and Meeden have suggested as an alternative measure of skewness 22 s k e w X m n E X n displaystyle mathrm skew X frac mu nu E X nu where m is the mean n is the median is the absolute value and E is the expectation operator This is closely related in form to Pearson s second skewness coefficient L moments Edit Use of L moments in place of moments provides a measure of skewness known as the L skewness 25 Distance skewness Edit A value of skewness equal to zero does not imply that the probability distribution is symmetric Thus there is a need for another measure of asymmetry that has this property such a measure was introduced in 2000 26 It is called distance skewness and denoted by dSkew If X is a random variable taking values in the d dimensional Euclidean space X has finite expectation X is an independent identically distributed copy of X and displaystyle cdot denotes the norm in the Euclidean space then a simple measure of asymmetry with respect to location parameter 8 is dSkew X 1 E X X E X X 2 8 if Pr X 8 1 displaystyle operatorname dSkew X 1 frac operatorname E X X operatorname E X X 2 theta text if Pr X theta neq 1 and dSkew X 0 for X 8 with probability 1 Distance skewness is always between 0 and 1 equals 0 if and only if X is diagonally symmetric with respect to 8 X and 28 X have the same probability distribution and equals 1 if and only if X is a constant c c 8 displaystyle c neq theta with probability one 27 Thus there is a simple consistent statistical test of diagonal symmetry based on the sample distance skewness dSkew n X 1 i j x i x j i j x i x j 2 8 displaystyle operatorname dSkew n X 1 frac sum i j x i x j sum i j x i x j 2 theta Medcouple Edit The medcouple is a scale invariant robust measure of skewness with a breakdown point of 25 28 It is the median of the values of the kernel function h x i x j x i x m x m x j x i x j displaystyle h x i x j frac x i x m x m x j x i x j taken over all couples x i x j displaystyle x i x j such that x i x m x j displaystyle x i geq x m geq x j where x m displaystyle x m is the median of the sample x 1 x 2 x n displaystyle x 1 x 2 ldots x n It can be seen as the median of all possible quantile skewness measures See also Edit Mathematics portalBragg peak Coskewness Kurtosis Shape parameters Skew normal distribution Skewness riskReferences EditCitations Edit a b Illowsky Barbara Dean Susan 27 March 2020 2 6 Skewness and the Mean Median and Mode Statistics OpenStax Retrieved 21 December 2022 a b c von Hippel Paul T 2005 Mean Median and Skew Correcting a Textbook Rule Journal of Statistics Education 13 2 Archived from the original on 20 February 2016 1 3 5 11 Measures of Skewness and Kurtosis NIST Retrieved 18 March 2012 a b Measures of Shape Skewness and Kurtosis 2008 2016 by Stan Brown Oak Road Systems a b Pearson s moment coefficient of skewness FXSolver com a b c d e Joanes D N Gill C A 1998 Comparing measures of sample skewness and kurtosis Journal of the Royal Statistical Society Series D 47 1 183 189 doi 10 1111 1467 9884 00122 a b Doane David P and Lori E Seward Measuring skewness a forgotten statistic Journal of Statistics Education 19 2 2011 1 18 Page 7 Duncan Cramer 1997 Fundamental Statistics for Social Research Routledge ISBN 9780415172042 p 85 Kendall M G Stuart A 1969 The Advanced Theory of Statistics Volume 1 Distribution Theory 3rd Edition Griffin ISBN 0 85264 141 9 Ex 12 9 Archived copy PDF Archived from the original PDF on 5 July 2010 Retrieved 9 April 2010 a href Template Cite web html title Template Cite web cite web a CS1 maint archived copy as title link Weisstein Eric W Pearson Mode Skewness MathWorld Weisstein Eric W Pearson s skewness coefficients MathWorld Doane David P Seward Lori E 2011 Measuring Skewness A Forgotten Statistic PDF Journal of Statistics Education 19 2 1 18 doi 10 1080 10691898 2011 11889611 Bowley A L 1901 Elements of Statistics P S King amp Son Laondon Or in a later edition BOWLEY AL Elements of Statistics 4th Edn New York Charles Scribner 1920 Kenney JF and Keeping ES 1962 Mathematics of Statistics Pt 1 3rd ed Van Nostrand page 102 Yule George Udny An introduction to the theory of statistics C Griffin limited 1912 Groeneveld Richard A 1991 An influence function approach to describing the skewness of a distribution The American Statistician 45 2 97 102 doi 10 2307 2684367 JSTOR 2684367 Johnson NL Kotz S amp Balakrishnan N 1994 p 3 and p 40 Wilks DS 1995 Statistical Methods in the Atmospheric Sciences p 27 Academic Press ISBN 0 12 751965 3 Weisstein Eric W Skewness mathworld wolfram com Retrieved 21 November 2019 A W L Pubudu Thilan Applied Statistics I Chapter 5 Measures of skewness PDF University of Ruhuna p 21 a b c d Groeneveld R A Meeden G 1984 Measuring Skewness and Kurtosis The Statistician 33 4 391 399 doi 10 2307 2987742 JSTOR 2987742 a b MacGillivray 1992 Hinkley DV 1975 On power transformations to symmetry Biometrika 62 101 111 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 Szekely G J 2000 Pre limit and post limit theorems for statistics In Statistics for the 21st Century eds C R Rao and G J Szekely Dekker New York pp 411 422 Szekely G J and Mori T F 2001 A characteristic measure of asymmetry and its application for testing diagonal symmetry Communications in Statistics Theory and Methods 30 8 amp 9 1633 1639 G Brys M Hubert A Struyf November 2004 A Robust Measure of Skewness Journal of Computational and Graphical Statistics 13 4 996 1017 doi 10 1198 106186004X12632 S2CID 120919149 Sources Edit Johnson NL Kotz S Balakrishnan N 1994 Continuous Univariate Distributions Vol 1 2 ed Wiley ISBN 0 471 58495 9 MacGillivray HL 1992 Shape properties of the g and h and Johnson families Communications in Statistics Theory and Methods 21 5 1244 1250 doi 10 1080 03610929208830842 Premaratne G Bera A K 2001 Adjusting the Tests for Skewness and Kurtosis for Distributional Misspecifications Working Paper Number 01 0116 University of Illinois Forthcoming in Comm in Statistics Simulation and Computation 2016 1 15 Premaratne G Bera A K 2000 Modeling Asymmetry and Excess Kurtosis in Stock Return Data Office of Research Working Paper Number 00 0123 University of Illinois Skewness Measures for the Weibull DistributionExternal links Edit Wikiversity has learning resources about Skewness Wikimedia Commons has media related to Skewness statistics Asymmetry coefficient Encyclopedia of Mathematics EMS Press 2001 1994 An Asymmetry Coefficient for Multivariate Distributions by Michel Petitjean On More Robust Estimation of Skewness and Kurtosis Comparison of skew estimators by Kim and White Closed skew Distributions Simulation Inversion and Parameter Estimation Retrieved from https en wikipedia org w index php title Skewness amp oldid 1140693810, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.