Brief Analysis of the Multivariate normality test of skewness and kurtosis
Minimization
In mathematics, traditional optimization problems are typically expressed in terms of minimization. When we talk about minimizing or maximizing a function, we refer to the maximum and minimum possible values of that function. This can be expressed in terms of global or local range. The definition of minimization in the thesaurus is the process of reducing something to a small amount, value, or position. Minimization (noun) is an instance of belittling or disparagement.
Maxima and Minima
The extreme points of a function are the maximum and the minimum points of the function. A maximum is attained when the function takes the maximum value and a minimum is attained when the function takes the minimum value.
Derivatives
A derivative means a change. Geometrically it can be represented as a line with some steepness. Imagine climbing a mountain which is very steep and 500 meters high. Is it easier to climb? Definitely not! Suppose walking on the road for 500 meters. Which one would be easier? Walking on the road would be much easier than climbing a mountain.
Concavity
In calculus, concavity is a descriptor of mathematics that tells about the shape of the graph. It is the parameter that helps to estimate the maximum and minimum value of any of the functions and the concave nature using the graphical method. We use the first derivative test and second derivative test to understand the concave behavior of the function.
Brief Analysis of the Multivariate normality test of skewness and kurtosis?
data:image/s3,"s3://crabby-images/a99e0/a99e08a3a8d5eb2cba742a9e8f4211c08b74895c" alt="Output of skewness and kurtosis calculation
Sample size: 248
Number of variables: 7
Univariate skewness and kurtosis
Skewness
SE_skew
Kurtosis
SE kurt
CR
-0.39529542 0.1546129
0.1609465 0.3080213
CR. EMO
2.09972916 0.1546129
9.2415300 0.3080213
DM
-0.08637023 0.1546129 -0.2112730 0.3080213
DM. EMO
1.27062886 0.1546129
8.0593088 0.3080213
EMO
-0.47083185 0.1546129 -0.3357961 0.3080213
OSB
-0.17883253 0.1546129
0.5939381 0.3080213
covid.19 -1.36140954 0.1546129
2.4836644 0.3080213
Mardia's multivariate skewness and kurtosis
z p-value
Skewness
39.55071 1634.76253
Kurtosis 142.13887
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