2020
DOI: 10.48550/arxiv.2012.10423
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Reduction of the Number of Variables in Parametric Constrained Least-Squares Problems

Abstract: For linearly constrained least-squares problems that depend on a vector of parameters, this paper proposes techniques for reducing the number of involved optimization variables. After first eliminating equality constraints in a numerically robust way by QR factorization, we propose a technique based on singular value decomposition (SVD) and unsupervised learning, that we call K-SVD, and neural classifiers to automatically partition the set of parameter vectors in K nonlinear regions in which the original probl… Show more

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