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ChainLadder (version 0.2.15)

MultiChainLadderFit-class: Class "MultiChainLadderFit", "MCLFit" and "GMCLFit"

Description

"MultiChainLadderFit" is a virtual class for the fitted models in the multivariate chain ladder reserving framework, "MCLFit" is a result from the interal call .FitMCL to store results in model MCL and "GMCLFit" is a result from the interal call .FitGMCL to store results in model GMCL. The two classes "MCLFit" and "GMCLFit" differ only in the presentation of \(B_k\) and \(\Sigma_{B_k}\), and different methods of Mse and predict will be dispatched according to these classes.

Arguments

Objects from the Class

"MultiChainLadderFit" is a virtual Class: No objects may be created from it. For "MCLFit" and "GMCLFit", objects can be created by calls of the form new("MCLFit", ...) and new("GMCLFit", ...) respectively.

Slots

Triangles:

Object of class "triangles"

models:

Object of class "list"

B:

Object of class "list"

Bcov:

Object of class "list"

ecov:

Object of class "list"

fit.method:

Object of class "character"

delta:

Object of class "numeric"

int:

Object of class "NullNum"

restrict.regMat:

Object of class "NullList"

Extends

"MCLFit" and "GMCLFit" extends class "MultiChainLadderFit", directly.

Methods

No methods defined with class "MultiChainLadderFit" in the signature.

For "MCLFit", the following methods are defined:

Mse

signature(ModelFit = "MCLFit", FullTriangles = "triangles"): Calculate Mse estimations.

predict

signature(object = "MCLFit"): Predict ultimate losses and complete the triangles. The output is an object of class "triangles".

For "GMCLFit", the following methods are defined:

Mse

signature(ModelFit = "GMCLFit", FullTriangles = "triangles"): Calculate Mse estimations.

predict

signature(object = "GMCLFit"): Predict ultimate losses and complete the triangles. The output is an object of class "triangles".

Author

Wayne Zhang actuary_zhang@hotmail.com

See Also

See also Mse.

Examples

Run this code
showClass("MultiChainLadderFit")

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