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arxiv: 1802.09905 · v2 · pith:5TOAUOBQnew · submitted 2018-02-27 · 💻 cs.IT · cs.LG· math.IT

Instance Optimal Decoding and the Restricted Isometry Property

classification 💻 cs.IT cs.LGmath.IT
keywords lripnon-linearconditionsinstanceisometryoptimalpropertyrandom
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In this paper, we address the question of information preservation in ill-posed, non-linear inverse problems, assuming that the measured data is close to a low-dimensional model set. We provide necessary and sufficient conditions for the existence of a so-called instance optimal decoder, i.e., that is robust to noise and modelling error. Inspired by existing results in compressive sensing, our analysis is based on a (Lower) Restricted Isometry Property (LRIP), formulated in a non-linear fashion. We also provide sufficient conditions for non-uniform recovery with random measurement operators, with a new formulation of the LRIP. We finish by describing typical strategies to prove the LRIP in both linear and non-linear cases, and illustrate our results by studying the invertibility of a one-layer neural net with random weights.

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