R/optRisk.R

###############################################################################
## Cramer-Rao bound
###############################################################################
setMethod("optRisk", signature(model = "L2ParamFamily", risk = "asCov"),
    function(model, risk){
        return(list(asCov = distr::solve(model@FisherInfo)))
    })

###############################################################################
## minimax asymptotic risk
###############################################################################
setMethod("optRisk", signature(model = "InfRobModel", risk = "asRisk"),
    function(model, risk, 
             z.start = NULL, A.start = NULL, upper = 1e4, 
             maxiter = 50, tol = .Machine$double.eps^0.4, warn = TRUE, noLow = FALSE){
        L2derivDim <- numberOfMaps(model@center@L2deriv)
        if(L2derivDim == 1){
            res <- getInfRobIC(L2deriv = model@center@L2derivDistr[[1]], 
                        neighbor = model@neighbor, risk = risk,
                        symm = model@center@L2derivDistrSymm[[1]],
                        Finfo = model@center@FisherInfo, trafo = trafo(model@center@param), 
                        upper = upper, maxiter = maxiter, tol = tol, warn = warn,
                        noLow = noLow)
            return(res$risk)
        }else{
            if(is(model@center@distribution, "UnivariateDistribution")){
                if((length(model@center@L2deriv) == 1) & is(model@center@L2deriv[[1]], "RealRandVariable")){
                    L2deriv <- model@center@L2deriv[[1]]
                    L2derivSymm <- model@center@L2derivSymm
                    L2derivDistrSymm <- model@center@L2derivDistrSymm
                }else{
                    L2deriv <- diag(dimension(model@center@L2deriv)) %*% model@center@L2deriv
                    L2deriv <- RealRandVariable(Map = L2deriv@Map, Domain = L2deriv@Domain)
                    nrvalues <- numberOfMaps(L2deriv)
                    if(numberOfMaps(model@center@L2deriv) != nrvalues){
                        L1 <- vector("list", nrvalues)
                        L2 <- vector("list", nrvalues)
                        for(i in 1:nrvalues){
                            L1[[i]] <- NonSymmetric()
                            L2[[i]] <- NoSymmetry()
                        }
                        L2derivSymm <- new("FunSymmList", L1)
                        L2derivDistrSymm <- new("DistrSymmList", L2)
                    }
                }

                res <- getInfRobIC(L2deriv = L2deriv, neighbor = model@neighbor, 
                            risk = risk, Distr = model@center@distribution, 
                            DistrSymm = model@center@distrSymm, L2derivSymm = L2derivSymm,
                            L2derivDistrSymm = L2derivDistrSymm, Finfo = model@center@FisherInfo, 
                            trafo = trafo(model@center@param), z.start = z.start, A.start = A.start, 
                            upper = upper, maxiter = maxiter, tol = tol, warn = warn)
                return(res$risk)
            }else{
                stop("not yet implemented")
            }
        }
    })
###############################################################################
## Optimally robust IC for robust model with fixed neighborhood 
## and finite-sample risks
###############################################################################
setMethod("optRisk", signature(model = "FixRobModel", risk = "fiUnOvShoot"),
    function(model, risk, sampleSize, upper = 1e4, maxiter = 50, 
             tol = .Machine$double.eps^0.4, warn = TRUE, Algo = "A", cont = "left"){
        if(!identical(all.equal(sampleSize, trunc(sampleSize)), TRUE))
            stop("'sampleSize' has to be an integer > 0")
        if(is(model@center@distribution, "UnivariateDistribution")){
            res <- getFixRobIC(Distr = model@center@distribution, 
                        neighbor = model@neighbor, risk = risk, 
                        sampleSize = sampleSize, upper = upper, maxiter = maxiter, 
                        tol = tol, warn = warn, Algo = Algo, cont = cont)
            res$info <- c("optIC", res$info)
            return(res$risk)
        }else{
            stop("restricted to univariate distributions")
        }
    })

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ROptEst documentation built on Sept. 12, 2024, 7:40 a.m.