4.5 Article

Structured Signal Recovery From Non-Linear and Heavy-Tailed Measurements

Journal

IEEE TRANSACTIONS ON INFORMATION THEORY
Volume 64, Issue 8, Pages 5513-5530

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIT.2018.2842216

Keywords

Signal reconstruction; nonlinear measurements; heavy-tailed noise; elliptically symmetric distribution

Funding

  1. National Science Foundation [DMS 1712956]

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We study high-dimensional signal recovery from non-linear measurements with design vectors having elliptically symmetric distribution. Special attention is devoted to the situation when the unknown signal belongs to a set of low statistical complexity, while both the measurements and the design vectors are heavy tailed. We propose and analyze a new estimator that adapts to the structure of the problem, while being robust both to the possible model misspecification characterized by arbitrary non-linearity of the measurements as well as to data corruption modeled by the heavy-tailed distributions. Moreover, this estimator has low computational complexity. Our results are expressed in the form of exponential concentration inequalities for the error of the proposed estimator. On the technical side, our proofs rely on the generic chaining methods, and illustrate the power of this approach for statistical applications. Theory is supported by numerical experiments demonstrating that our estimator outperforms existing alternatives when data are heavy-tailed.

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