Statistics
Kurtosis
compute the coefficient of kurtosis
Calling Sequence
Parameters
Description
Computation
Data Set Options
Random Variable Options
Examples
References
Compatibility
Kurtosis(A, ds_options)
Kurtosis(M, ds_options)
Kurtosis(X, rv_options)
A
-
data sample
M
Matrix data set
X
algebraic; random variable or distribution
ds_options
(optional) equation(s) of the form option=value where option is one of ignore, or weights; specify options for computing the coefficient of kurtosis of a data set
rv_options
(optional) equation of the form numeric=value; specifies options for computing the coefficient of kurtosis of a random variable
The Kurtosis function computes the coefficient of kurtosis of the specified random variable or data set. In the data set case, the following formula for the kurtosis is used:
Kurtosis⁡A=N⁢CentralMoment⁡A,4N−1⁢Variance⁡A2,
where N is the number of elements in A. In the random variable case, Maple uses the limit of that formula for N↦∞, that is,
Kurtosis⁡X=CentralMoment⁡X,4Variance⁡X2.
There is a different quantity that some authors call kurtosis. We shall call this quantity excess kurtosis here. The excess kurtosis is not predefined in Maple, but it can be easily obtained by subtracting 3 from the kurtosis: ExcessKurtosis≔Kurtosis−3. Alternatively, it can be computed as the fourth Cumulant divided by the square of the second Cumulant.
The first parameter can be a data set (e.g., a Vector), a Matrix data set, a distribution (see Statistics[Distribution]), a random variable, or an algebraic expression involving random variables (see Statistics[RandomVariable]).
By default, all computations involving random variables are performed symbolically (see option numeric below).
All computations involving data are performed in floating-point; therefore, all data provided must have type realcons and all returned solutions are floating-point, even if the problem is specified with exact values.
For more information about computation in the Statistics package, see the Statistics[Computation] help page.
The ds_options argument can contain one or more of the options shown below. More information for some options is available in the Statistics[DescriptiveStatistics] help page.
ignore=truefalse -- This option controls how missing data is handled by the Kurtosis command. Missing items are represented by undefined or Float(undefined). So, if ignore=false and A contains missing data, the Kurtosis command will return undefined. If ignore=true all missing items in A will be ignored. The default value is false.
weights=Vector -- Data weights. The number of elements in the weights array must be equal to the number of elements in the original data sample. By default all elements in A are assigned weight 1.
The rv_options argument can contain one or more of the options shown below. More information for some options is available in the Statistics[RandomVariables] help page.
numeric=truefalse -- By default, the coefficient of kurtosis is computed using exact arithmetic. To compute the coefficient of kurtosis numerically, specify the numeric or numeric = true option.
with⁡Statistics:
Compute the coefficient of kurtosis of the log normal distribution with parameters mu and sigma.
Kurtosis⁡LogNormal⁡μ,σ
ⅇ8⁢σ2+4⁢μ−3⁢ⅇ2⁢σ2+4⁢μ−4⁢ⅇ5⁢σ2+4⁢μ+6⁢ⅇ3⁢σ2+4⁢μⅇσ2+2⁢μ2⁢ⅇσ2−12
Use numeric parameters.
Kurtosis⁡Β⁡3,5
711275
Kurtosis⁡Β⁡3,5,numeric
2.585454546
Generate a random sample of size 100000 drawn from the above distribution and compute the sample kurtosis.
A≔Sample⁡Β⁡3,5,105:
Kurtosis⁡A
2.58685765469646
Compute the standard error of the sample kurtosis for the normal distribution with parameters 5 and 2.
X≔RandomVariable⁡Normal⁡5,2:
B≔Sample⁡X,106:
Kurtosis⁡X,StandardError106⁡Kurtosis,X
3,6500
Kurtosis⁡B
3.00625128816985
Compute the coefficient of kurtosis of a weighted data set.
V≔seq⁡i,i=57..77,undefined:
W≔2,4,14,41,83,169,394,669,990,1223,1329,1230,1063,646,392,202,79,32,16,5,2,5:
Kurtosis⁡V,weights=W
Float⁡undefined
Kurtosis⁡V,weights=W,ignore=true
2.79735139935517
Consider the following Matrix data set.
M≔Matrix⁡3,1130,114694,4,1527,127368,3,907,88464,2,878,96484,4,995,128007
M≔31130114694415271273683907884642878964844995128007
We compute the kurtosis of each of the columns.
Kurtosis⁡M
1.477551020408162.061469467497881.10201410391208
Stuart, Alan, and Ord, Keith. Kendall's Advanced Theory of Statistics. 6th ed. London: Edward Arnold, 1998. Vol. 1: Distribution Theory.
The M parameter was introduced in Maple 16.
For more information on Maple 16 changes, see Updates in Maple 16.
See Also
Statistics[Computation]
Statistics[DescriptiveStatistics]
Statistics[Distributions]
Statistics[ExpectedValue]
Statistics[RandomVariables]
Statistics[StandardError]
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