Analysis of parametric models for coupled systems
Provides a theoretical unification for parametric models, but the contribution is primarily conceptual without empirical validation or concrete performance gains.
The paper unifies various parametric model constructions under a functional analytic framework by linking them to a linear operator, enabling hierarchical tensor decompositions and refinements for structured models like coupled systems.
In many instances one has to deal with parametric models. Such models in vector spaces are connected to a linear map. The reproducing kernel Hilbert space and affine- / linear- representations in terms of tensor products are directly related to this linear operator. This linear map leads to a generalised correlation operator, in fact it provides a factorisation of the correlation operator and of the reproducing kernel. The spectral decomposition of the correlation and kernel, as well as the associated Karhunen-Loève or proper orthogonal decomposition are a direct consequence. This formulation thus unifies many such constructions under a functional analytic view. Recursively applying factorisations in higher order tensor representations leads to hierarchical tensor decompositions. This format also allows refinements for cases when the parametric model has more structure. Examples are shown for vector- and tensor-fields with certain required properties. Another kind of structure is the parametric model of a coupled system. It is shown that this can also be reflected in the theoretical framework.