File: t_Poisson_std.expout

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Distribution  class=Poisson name=Poisson dimension=1 lambda=10
Distribution  Poisson(lambda = 10)
Elliptical =  False
Continuous =  False
oneRealization= class=Point name=Unnamed dimension=1 values=[14]
Point=  class=Point name=Unnamed dimension=1 values=[12]
log pdf=-2.356193
pdf     =0.094780
cdf=0.791556
ccdf=0.208444
pdf gradient     = class=Point name=Unnamed dimension=1 values=[0.0189561]
cdf gradient     = class=Point name=Unnamed dimension=1 values=[-0.0947803]
quantile= class=Point name=Unnamed dimension=1 values=[15]
cdf(quantile)=0.951260
entropy=2.561410
mean= class=Point name=Unnamed dimension=1 values=[10]
standard deviation= class=Point name=Unnamed dimension=1 values=[3.16228]
skewness= class=Point name=Unnamed dimension=1 values=[0.316228]
kurtosis= class=Point name=Unnamed dimension=1 values=[3.1]
covariance= class=CovarianceMatrix dimension=1 implementation=class=MatrixImplementation name=Unnamed rows=1 columns=1 values=[10]
parameters= [class=PointWithDescription name=X0 dimension=1 description=[lambda] values=[10]]
Standard representative= Poisson(lambda = 10)
probabilities= [4.53999e-05,0.000453999,0.00227,0.00756665,0.0189166,0.0378333,0.0630555,0.0900792,0.112599,0.12511,0.12511,0.113736,0.0947803,0.0729079,0.0520771,0.0347181,0.0216988,0.012764,0.00709111,0.00373216,0.00186608,0.00088861,0.000403914,0.000175615,7.31728e-05,2.92691e-05,1.12573e-05,4.16939e-06,1.48907e-06,5.13472e-07,1.71157e-07,5.5212e-08,1.72537e-08,5.22841e-09,1.53777e-09,4.39362e-10,1.22045e-10,3.29851e-11,8.6803e-12,2.22572e-12,5.56429e-13,1.35715e-13,3.2313e-14]#43