Kurtosis

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Kurtosis (from Template:Langx (Template:Langx or Template:Langx), meaning 'curved, arching') refers to the degree of tailedness in the probability distribution of a real-valued, random variable in probability theory and statistics. Similar to skewness, kurtosis provides insight into specific characteristics of a distribution. Various methods exist for quantifying kurtosis in theoretical distributions, and corresponding techniques allow estimation based on sample data from a population. It is important to note that different measures of kurtosis can yield varying interpretations.

The standard measure of a distribution's kurtosis, originating with Karl Pearson,Template:R is a scaled version of the fourth moment of the distribution. This number is related to the tails of the distribution, not its peak;Template:R hence, the sometimes-seen characterization of kurtosis as peakedness is incorrect. For this measure, higher kurtosis corresponds to greater extremity of deviations (or outliers), and not the configuration of data near the mean.

Excess kurtosis, typically compared to a value of 0, characterizes the tailedness of a distribution. A univariate normal distribution has an excess kurtosis of 0. Negative excess kurtosis indicates a platykurtic distribution, which does not necessarily have a flat top but produces fewer or less extreme outliers than the normal distribution. For instance, the uniform distribution (i.e. one that is uniformly finite over some bound and zero elsewhere) is platykurtic. On the other hand, positive excess kurtosis signifies a leptokurtic distribution. The Laplace distribution for example, has tails that decay more slowly than a normal one, resulting in more outliers. To simplify comparison with the normal distribution, excess kurtosis is calculated as Pearson's kurtosis minus 3. Some authors and software packages use kurtosis to refer specifically to excess kurtosis, but this article distinguishes between the two for clarity.

Alternative measures of kurtosis are: the L-kurtosis, which is a scaled version of the fourth L-moment; measures based on four population or sample quantiles.Template:R These are analogous to the alternative measures of skewness that are not based on ordinary moments.Template:R

Pearson moments

The kurtosis is the fourth standardized moment, defined as Kurt[X]=E[(Xμσ)4]=E[(Xμ)4](E[(Xμ)2])2=μ4σ4, where Template:Math is the fourth central moment and Template:Mvar is the standard deviation. Several letters are used in the literature to denote the kurtosis. A very common choice is Template:Mvar, which is fine as long as it is clear that it does not refer to a cumulant. Other choices include Template:Math, to be similar to the notation for skewness, although sometimes this is instead reserved for the excess kurtosis.

The kurtosis is bounded below by the squared skewness plus 1:Template:R μ4σ4(μ3σ3)2+1, where Template:Math is the third central moment. The lower bound is realized by the Bernoulli distribution. There is no upper limit to the kurtosis of a general probability distribution, and it may be infinite.

A reason why some authors favor the excess kurtosis is that cumulants are extensive. Formulas related to the extensive property are more naturally expressed in terms of the excess kurtosis. For example, let Template:Math be independent random variables for which the fourth moment exists, and let Template:Mvar be the random variable defined by the sum of the Template:Math. The excess kurtosis of Template:Mvar isKurt[Y]3=1(j=1nσj2)2i=1nσi4(Kurt[Xi]3),where σi is the standard deviation of Template:Math. In particular if all of the Template:Math have the same variance, then this simplifies toKurt[Y]3=1n2i=1n(Kurt[Xi]3).

The reason not to subtract 3 is that the bare moment better generalizes to multivariate distributions, especially when independence is not assumed. The cokurtosis between pairs of variables is an order four tensor. For a bivariate normal distribution, the cokurtosis tensor has off-diagonal terms that are neither 0 nor 3 in general, so attempting to "correct" for an excess becomes confusing. It is true, however, that the joint cumulants of degree greater than two for any multivariate normal distribution are zero.

For two random variables, Template:Mvar and Template:Mvar, not necessarily independent, the kurtosis of the sum, Template:Math, is Kurt[X+Y]=1σX+Y4(σX4Kurt[X]+4σX3σYCokurt[X,X,X,Y]+6σX2σY2Cokurt[X,X,Y,Y]+4σXσY3Cokurt[X,Y,Y,Y]+σY4Kurt[Y]). Note that the fourth-power binomial coefficients (1, 4, 6, 4, 1) appear in the above equation.

Interpretation

The interpretation of the Pearson measure of kurtosis (or excess kurtosis) was once debated, but it is now well-established. As noted by Westfall in 2014Template:R, "... its unambiguous interpretation relates to tail extremity". Specifically, it reflects either the presence of existing outliers (for sample kurtosis) or the tendency to produce outliers (for the kurtosis of a probability distribution). The underlying logic is straightforward: kurtosis represents the average (or expected value) of standardized data raised to the fourth power. Standardized values less than 1—corresponding to data within one standard deviation of the mean (where the peak occurs)—contribute minimally to kurtosis. This is because raising a number less than 1 to the fourth power brings it closer to zero. The meaningful contributors to kurtosis are data values outside the peak region, i.e., the outliers. Therefore, kurtosis primarily measures outliers and provides no information about the central peak.

Numerous misconceptions about kurtosis relate to notions of peakedness. One such misconception is that kurtosis measures both the peakedness of a distribution and the heaviness of its tail.Template:R Other incorrect interpretations include notions like lack of shoulders (where the shoulder refers vaguely to the area between the peak and the tail, or more specifically, the region about one standard deviation from the mean) or bimodality.Template:R Balanda and MacGillivray argue that the standard definition of kurtosis "poorly captures the kurtosis, peakedness, or tail weight of a distribution." Instead, they propose a vague definition of kurtosis as the location- and scale-free movement of probability mass from the distribution's shoulders into its center and tails.Template:R

Moors' interpretation

In 1986, Moors gave an interpretation of kurtosis.Template:R Let Z=Xμσ, where Template:Mvar is a random variable, Template:Mvar is the mean and Template:Mvar is the standard deviation.

Now by definition of the kurtosis κ, and by the well-known identity E[V2]=var[V]+E[V]2, κ=E[Z4]=var[Z2]+E[Z2]2=var[Z2]+var[Z]2=var[Z2]+1.

The kurtosis can now be seen as a measure of the dispersion of Template:Math around its expectation. Alternatively it can be seen to be a measure of the dispersion of Template:Mvar around Template:Math and Template:Math. Template:Mvar attains its minimal value in a symmetric two-point distribution. In terms of the original variable Template:Mvar, the kurtosis is a measure of the dispersion of Template:Mvar around the two values Template:Math.

High values of Template:Mvar arise where the probability mass is concentrated around the mean and the data-generating process produces occasional values far from the mean, or where the probability mass is concentrated in the tails of the distribution.

Maximal entropy

The entropy of a distribution is p(x)lnp(x)dx.

For any μn,Σn×n with Σ positive definite, among all probability distributions on n with mean μ and covariance Σ, the normal distribution 𝒩(μ,Σ) has the largest entropy.

Since mean μ and covariance Σ are the first two moments, it is natural to consider extension to higher moments. In fact, by Lagrange multiplier method, for any prescribed first n moments, if there exists some probability distribution of form p(x)eiaixi+ijbijxixj++i1inxi1xin that has the prescribed moments (if it is feasible), then it is the maximal entropy distribution under the given constraints.[1][2]

By serial expansion, 12πe12x214gx4x2ndx=12πe12x214gx4x2ndx=k1k!(g4)k(2n+4k1)!!=(2n1)!!14g(2n+3)!!+O(g2) so if a random variable has probability distribution p(x)=e12x214gx4/Z, where Z is a normalization constant, then its kurtosis is 36g+O(g2).[3]

Excess kurtosis

The excess kurtosis is defined as kurtosis minus 3. There are three distinct regimes as described below.

Mesokurtic

Distributions with zero excess kurtosis are called mesokurtic, or mesokurtotic. The most prominent example of a mesokurtic distribution is the normal distribution family, regardless of the values of its parameters. A few other well-known distributions can be mesokurtic, depending on parameter values: for example, the binomial distribution is mesokurtic for p=1/2±1/12.

Leptokurtic

A distribution with positive excess kurtosis is called leptokurtic, or leptokurtotic. A leptokurtic distribution has fatter tails. (Script error: No such module "Lang". means 'slender', originally referring to the peak.[4]) Examples of leptokurtic distributions include the Student's t-distribution, Rayleigh distribution, Laplace distribution, exponential distribution, Poisson distribution and the logistic distribution. Such distributions are sometimes termed super-Gaussian.Template:R

File:Three probability density functions.png
Three symmetric increasingly leptokurtic probability density functions; their intersections are indicated by vertical lines.

Platykurtic

File:1909 US Penny.jpg
The coin toss is the most platykurtic distribution

A distribution with negative excess kurtosis is called platykurtic, or platykurtotic. A platykurtic distribution has thinner tails (Script error: No such module "Lang". means 'broad', originally referring to the peak).[5] Examples of platykurtic distributions include the continuous and discrete uniform distributions, and the raised cosine distribution. The most platykurtic distribution of all is the Bernoulli distribution with p = 1/2 (for example the number of times one obtains heads when flipping a coin once, a coin toss), for which the excess kurtosis is −2.

Graphical examples

The Pearson type VII family

File:Pearson type VII distribution PDF.svg
PDF for the Pearson type VII distribution with excess kurtosis of infinity (red); 2 (blue); and 0 (black)
File:Pearson type VII distribution log-PDF.svg
Log-PDF for the Pearson type VII distribution with excess kurtosis of infinity (red); 2 (blue); 1, 1/2, 1/4, 1/8, and 1/16 (gray); and 0 (black)

The effects of kurtosis are illustrated using a parametric family of distributions whose kurtosis can be adjusted while their lower-order moments and cumulants remain constant. Consider the Pearson type VII family, which is a special case of the Pearson type IV family restricted to symmetric densities. The probability density function (PDF) is given by f(x;a,m)=Γ(m)aπΓ(m1/2)[1+(xa)2]m, where Template:Mvar is a scale parameter and Template:Mvar is a shape parameter.

All densities in this family are symmetric. The Template:Mvar-th moment exists provided Template:Math. For the kurtosis to exist, we require Template:Math. Then the mean and skewness exist and are both identically zero. Setting Template:Math makes the variance equal to unity. Then the only free parameter is Template:Mvar, which controls the fourth moment (and cumulant) and hence the kurtosis. One can reparameterize with m=5/2+3/γ2, where γ2 is the excess kurtosis as defined above. This yields a one-parameter leptokurtic family with zero mean, unit variance, zero skewness, and arbitrary non-negative excess kurtosis. The reparameterized density is g(x;γ2)=f(x;a=2+6γ21,m=52+3γ21).

In the limit as γ2, one obtains the density g(x)=3(2+x2)5/2, which is shown as the red curve in the images on the right.

In the other direction as γ20 one obtains the standard normal density as the limiting distribution, shown as the black curve.

In the images on the right, the blue curve represents the density xg(x;2) with excess kurtosis of 2. The top image shows that leptokurtic densities in this family have a higher peak than the mesokurtic normal density, although this conclusion is only valid for this select family of distributions. The comparatively fatter tails of the leptokurtic densities are illustrated in the second image, which plots the natural logarithm of the Pearson type VII densities: the black curve is the logarithm of the standard normal density, which is a parabola. One can see that the normal density allocates little probability mass to the regions far from the mean (has thin tails), compared with the blue curve of the leptokurtic Pearson type VII density with excess kurtosis of 2. Between the blue curve and the black are other Pearson type VII densities with Template:Math = 1, 1/2, 1/4, 1/8, and 1/16. The red curve again shows the upper limit of the Pearson type VII family, with γ2= (which, strictly speaking, means that the fourth moment does not exist). The red curve decreases the slowest as one moves outward from the origin (has fat tails).

Other well-known distributions

File:Standard symmetric pdfs.svg
Probability density functions for selected distributions with mean 0, variance 1 and different excess kurtosis
File:Standard symmetric pdfs logscale.svg
Logarithms of probability density functions for selected distributions with mean 0, variance 1 and different excess kurtosis

Several well-known, unimodal, and symmetric distributions from different parametric families are compared here. Each has a mean and skewness of zero. The parameters have been chosen to result in a variance equal to 1 in each case. The images on the right show curves for the following seven densities, on a linear scale and logarithmic scale:

Note that in these cases the platykurtic densities have bounded support, whereas the densities with positive or zero excess kurtosis are supported on the whole real line.

One cannot infer that high or low kurtosis distributions have the characteristics indicated by these examples. There exist platykurtic densities with infinite support, e.g., exponential power distributions with sufficiently large shape parameter b, and there exist leptokurtic densities with finite support. An example of the latter is a distribution that is uniform between −3 and −0.3, between −0.3 and 0.3, and between 0.3 and 3, with the same density in the (−3, −0.3) and (0.3, 3) intervals, but with 20 times more density in the (−0.3, 0.3) interval.

File:Platykurtic.png
A platykurtic distribution that is infinitely peaked
File:Leptokurtic.png
A leptokurtic distribution that is low and appears flat-topped

Also, one cannot infer from the graphs that higher kurtosis distributions are more peaked and that lower kurtosis distributions are more flat. There exist platykurtic densities with infinite peakedness; e.g., an equal mixture of the beta distribution with parameters 0.5 and 1 with its reflection about 0.0, and there exist leptokurtic densities that appear flat-topped; e.g., a mixture of distribution that is uniform between −1 and 1 with a T(4.0000001) Student's t-distribution, with mixing probabilities 0.999 and 0.001.

Graphs of the standardized versions of these distributions are given to the right.

Sample kurtosis

Definitions

A natural but biased estimator

For a sample of n values, a method of moments estimator of the population excess kurtosis can be defined as g2=m4m223=1ni=1n(xix)4[1ni=1n(xix)2]23 where Template:Math is the fourth sample moment about the mean, Template:Math is the second sample moment about the mean (that is, the sample variance), Template:Math is the Template:Mvar-th value, and x is the sample mean.

This formula has the simpler representation,g2=1ni=1nzi43where the zi values are the standardized data values using the standard deviation defined using Template:Mvar rather than Template:Math in the denominator.

For example, suppose the data values are 0, 3, 4, 1, 2, 3, 0, 2, 1, 3, 2, 0, 2, 2, 3, 2, 5, 2, 3, 999.

Then the Template:Math values are −0.239, −0.225, −0.221, −0.234, −0.230, −0.225, −0.239, −0.230, −0.234, −0.225, −0.230, −0.239, −0.230, −0.230, −0.225, −0.230, −0.216, −0.230, −0.225, 4.359

and the Template:Math values are 0.003, 0.003, 0.002, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.003, 0.002, 0.003, 0.003, 360.976.

The average of these values is 18.05 and the excess kurtosis is thus 18.05 − 3 = 15.05. This example makes it clear that data near the middle or peak of the distribution do not contribute to the kurtosis statistic, hence kurtosis does not measure peakedness. It is simply a measure of the outlier, 999 in this example.

Standard unbiased estimator

Given a sub-set of samples from a population, the sample excess kurtosis g2 above is a biased estimator of the population excess kurtosis. An alternative estimator of the population excess kurtosis, which is unbiased in random samples of a normal distribution, is defined as follows:Template:R G2=k4k22=n2[(n+1)m43(n1)m22](n1)(n2)(n3)(n1)2n2m22=n1(n2)(n3)[(n+1)m4m223(n1)]=n1(n2)(n3)[(n+1)g2+6]=(n+1)n(n1)(n2)(n3)i=1n(xix¯)4(i=1n(xix¯)2)23(n1)2(n2)(n3)=(n+1)n(n1)(n2)(n3)i=1n(xix¯)4k223(n1)2(n2)(n3) where Template:Math is the unique symmetric unbiased estimator of the fourth cumulant, Template:Math is the unbiased estimate of the second cumulant (identical to the unbiased estimate of the sample variance), Template:Math is the fourth sample moment about the mean, Template:Math is the second sample moment about the mean, Template:Math is the Template:Mvar-th value, and x¯ is the sample mean. This adjusted Fisher–Pearson standardized moment coefficient G2 is the version found in Excel and several statistical packages including Minitab, SAS, and SPSS.[6]

Unfortunately, in non-normal samples G2 is itself generally biased.

Upper bound

An upper bound for the sample kurtosis of Template:Mvar (Template:Math) real numbers isTemplate:R g212n3n2g12+n23, where g1=m3/m23/2 is the corresponding sample skewness.

Variance under normality

The variance of the sample kurtosis of a sample of size Template:Mvar from the normal distribution isTemplate:Rvar(g2)=24n(n1)2(n3)(n2)(n+3)(n+5)

Stated differently, under the assumption that the underlying random variable X is normally distributed, it can be shown that ng2d𝒩(0,24).Template:R

Applications

The sample kurtosis is a useful measure of whether there is a problem with outliers in a data set. Larger kurtosis indicates a more serious outlier problem, and may lead the researcher to choose alternative statistical methods.

D'Agostino's K-squared test is a goodness-of-fit normality test based on a combination of the sample skewness and sample kurtosis, as is the Jarque–Bera test for normality.

For non-normal samples, the variance of the sample variance depends on the kurtosis; for details, please see variance.

Pearson's definition of kurtosis is used as an indicator of intermittency in turbulence.Template:R It is also used in magnetic resonance imaging to quantify non-Gaussian diffusion.[7]

A concrete example is the following lemma by He, Zhang, and Zhang:[8] Assume a random variable Template:Mvar has expectation E[X]=μ, variance E[(Xμ)2]=σ2 and kurtosis κ=1σ4E[(Xμ)4]. Assume we sample n=23+33κlog1δ many independent copies. Then Pr[maxi=1nXiμ]δandPr[mini=1nXiμ]δ.

This shows that with Θ(κlog1δ) many samples, we will see one that is above the expectation with probability at least 1δ. In other words: If the kurtosis is large, there may be a lot of values either all below or above the mean.

Kurtosis convergence

Applying band-pass filters to digital images, kurtosis values tend to be uniform, independent of the range of the filter. This behavior, termed kurtosis convergence, can be used to detect image splicing in forensic analysis.Template:R

Seismic signal analysis

Kurtosis can be used in geophysics to distinguish different types of seismic signals. It is particularly effective in differentiating seismic signals generated by human footsteps from other signals.[9] This is useful in security and surveillance systems that rely on seismic detection.

Weather prediction

In meteorology, kurtosis is used to analyze weather data distributions. It helps predict extreme weather events by assessing the probability of outlier values in historical data,[10] which is valuable for long-term climate studies and short-term weather forecasting.

Other measures

A different measure of kurtosis is provided by using L-moments instead of the ordinary moments.Template:R

See also

Template:Sister project

References

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Further reading

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External links

Template:Sister project

Template:Statistics