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sympy.stats.LogLogistic() in python

Last Updated : 05 Jun, 2020
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With the help of sympy.stats.LogLogistic() method, we can get the continuous random variable which represents the Log-Logistic distribution.
Syntax : sympy.stats.LogLogistic(name, alpha, beta) Where, alpha and beta are real number and alpha, beta > 0. Return : Return the continuous random variable.
Example #1 : In this example we can see that by using sympy.stats.LogLogistic() method, we are able to get the continuous random variable representing Log-Logistic distribution by using this method. Python3 1=1
# Import sympy and LogLogistic
from sympy.stats import LogLogistic, density
from sympy import Symbol, pprint

z = Symbol("z")
alpha = Symbol("alpha", positive = True)
beta = Symbol("beta", positive = True)

# Using sympy.stats.LogLogistic() method
X = LogLogistic("x", alpha, beta)
gfg = density(X)(z)

pprint(gfg)
Output :
beta - 1 / z \ beta*|-----| \alpha/ ------------------------ 2 / beta \ |/ z \ | alpha*||-----| + 1| \\alpha/ /
Example #2 : Python3 1=1
# Import sympy and LogLogistic
from sympy.stats import LogLogistic, density
from sympy import Symbol, pprint

z = 1.2
alpha = 2
beta = 3

# Using sympy.stats.LogLogistic() method
X = LogLogistic("x", alpha, beta)
gfg = density(X)(z)

pprint(gfg)
Output :
0.365196502770083

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