Dette, HolgerHolland-Letz, Tim2009-01-132009-01-132009-01-13http://hdl.handle.net/2003/2599210.17877/DE290R-8237We consider the common nonlinear regression model where the variance as well as the mean is a parametric function of the explanatory variables. The c-optimal design problem is investigated in the case when the parameters of both the mean and the variance function are of interest. A geometric characterization of c-optimal designs in this context is presented, which generalizes the classical result of Elfving (1952) for c-optimal designs. As in Elfving's famous characterization c-optimal designs can be described as representations of boundary points of a convex set. However, in the case where there appear parameters of interest in the variance, the structure of the Elfving set is di fferent. Roughly speaking the Elfving set corresponding to a heteroscedastic regression model is the convex hull of a set of ellipsoids induced by the underlying model and indexed by the design space. The c-optimal designs are characterized as representations of the points where the line in direction of the vector c intersects the boundary of the new Elfving set. The theory is illustrated in several examples including pharmacokinetic models with random effects.enC-optimal designElfving's theoremGeometric characterizationHeteroscedastic regressionLocally optimal designPharmacokinetic modelsRandom effects004A geometric characterization of c-optimal designs for heteroscedastic regressionreport