RobAStBase (version 1.2.1)

getBiasIC: Generic function for the computation of the asymptotic bias for an IC

Description

Generic function for the computation of the asymptotic bias for an IC.

Usage

getBiasIC(IC, neighbor, ...)

# S4 method for IC,UncondNeighborhood getBiasIC(IC, neighbor, L2Fam, biastype = symmetricBias(), normtype = NormType(), tol = .Machine$double.eps^0.25, numbeval = 1e5, withCheck = TRUE, ...)

Value

The bias of the IC is computed.

Arguments

IC

object of class "InfluenceCurve"

neighbor

object of class "Neighborhood".

L2Fam

object of class "L2ParamFamily".

biastype

object of class "BiasType"

normtype

object of class "NormType"

tol

the desired accuracy (convergence tolerance).

numbeval

number of evalation points.

withCheck

logical: should a call to checkIC be done to check accuracy (defaults to TRUE).

...

additional parameters to be passed to expectation E

Methods

IC = "IC", neighbor = "UncondNeighborhood"

determines the as. bias by random evaluation of the IC; this random evaluation is done by the internal S4-method .evalBiasIC; this latter dispatches according to the signature IC, neighbor, biastype.
For signature IC="IC", neighbor = "ContNeighborhood", biastype = "BiasType", also an argument normtype is used to be able to use self- or information standardizing norms; besides this the signatures IC="IC", neighbor = "TotalVarNeighborhood", biastype = "BiasType", IC="IC", neighbor = "ContNeighborhood", biastype = "onesidedBias", and IC="IC", neighbor = "ContNeighborhood", biastype = "asymmetricBias" are implemented.

Author

Peter Ruckdeschel peter.ruckdeschel@uni-oldenburg.de

References

Huber, P.J. (1968) Robust Confidence Limits. Z. Wahrscheinlichkeitstheor. Verw. Geb. 10:269--278.

Rieder, H. (1980) Estimates derived from robust tests. Ann. Stats. 8: 106--115.

Rieder, H. (1994) Robust Asymptotic Statistics. New York: Springer.

Kohl, M. (2005) Numerical Contributions to the Asymptotic Theory of Robustness. Bayreuth: Dissertation.

Ruckdeschel, P. and Kohl, M. (2005) Computation of the Finite Sample Bias of M-estimators on Neighborhoods.

See Also

getRiskIC-methods, InfRobModel-class