Illinois-Type Methods for Noisy Euclidean Distance Realization.

IEEE Signal Process. Lett.(2022)

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摘要
In this work, we introduce an iterative algorithm for the Euclidean distance matrix completion (EDMC) problem with noisy and incomplete distance measurements. The proposed method is based on semidefinite programming, utilizes a Pareto iterative approach, and performs a projection-free convex optimization over the spectrahedron to solve a level-set problem relevant to EDMC problems. The optimality trade-off between the trace of a positive semidefinite matrix and a loss function is pursued over Pareto optimal points with simple, derivative-free, costly efficient nonlinear equation root finding iterations called Illinois-type methods. We evaluate our approach numerically in a scenario where distance measurements are affected by multiplicative noise.
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关键词
Noise measurement, Symmetric matrices, Convergence, Euclidean distance, Wireless sensor networks, Pareto optimization, Iterative methods, Euclidean distance matrix completion, graph realization, Illinois-type methods, Pareto optimality
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