Generates an object of class "L2ParamFamily".
L2ParamFamily(name, distribution = Norm(), distrSymm,
main = 0, nuisance, trafo, param, props = character(0),
L2deriv = EuclRandVarList(RealRandVariable(list(function(x) {x}),
Domain = Reals())),
L2derivSymm, L2derivDistr, L2derivDistrSymm, FisherInfo)character string: name of the family
object of class "Distribution":
member of the family
object of class "DistributionSymmetry":
symmetry of distribution.
numeric vector: main parameter
numeric vector: nuisance parameter
matrix: transformation of the parameter
object of class "ParamFamParameter":
parameter of the family
character vector: properties of the family
object of class "EuclRandVariable":
L2 derivative of the family
object of class "FunSymmList":
symmetry of the maps contained in L2deriv
object of class "UnivarDistrList":
distribution of L2deriv
object of class "DistrSymmList":
symmetry of the distributions contained in L2derivDistr
object of class "PosDefSymmMatrix":
Fisher information of the family
Object of class "L2ParamFamily"
If name is missing, the default
“L2 differentiable parametric family of probability measures”
is used. In case distrSymm is missing it is set to
NoSymmetry().
If param is missing, the parameter is created via
main, nuisance and trafo as described
in ParamFamParameter. In case L2derivSymm is
missing, it is filled with an object of class FunSymmList
with entries NonSymmetric(). In case L2derivDistr is missing,
it is computed via imageDistr. If L2derivDistrSymm is missing,
it is set to an object of class DistrSymmList with entries
NoSymmetry(). In case FisherInfo is missing, it is computed
from L2deriv using E.
Rieder, H. (1994) Robust Asymptotic Statistics. New York: Springer.
Kohl, M. (2005) Numerical Contributions to the Asymptotic Theory of Robustness. Bayreuth: Dissertation.
# NOT RUN {
F1 <- L2ParamFamily()
plot(F1)
# }
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