Best interpolation in seminorm with convex constraints |
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Authors: | Kang Zhao |
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Affiliation: | 1. Mathematics Department, University of Wisconsin-Madison, 53706, Madison, WI, USA
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Abstract: | Implicit and explicit characterizations of the solutions to the following constrained best interpolation problem $$min left{ {left| {Tx - z} right|:x in C cap A^{ - 1} d} right}$$ are presented. Here,T is a densely-defined, closed, linear mapping from a Hilbert spaceX to a Hilbert spaceY, A: X→Z is a continuous, linear mapping withZ a locally, convex linear topological space,C is a closed, convex set in the domain domT ofT, andd∈AC. For the case in whichC is a closed, convex cone, it is shown that the constrained best interpolation problem can generally be solved by finding the saddle points of a saddle function on the whole space, and, if the explicit characterization is applicable, then solving this problem is equivalent to solving an unconstrained minimization problem for a convex function. |
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