Failure Analysis of the Interval-Passing Algorithm for Compressed Sensing
Yauhen Yakimenka, Eirik Rosnes

TL;DR
This paper thoroughly analyzes the failure modes of the interval-passing algorithm in compressed sensing, introducing the concept of termatiko sets to characterize failures and proposing methods to improve recovery performance.
Contribution
It provides a complete graph-theoretic characterization of IPA failures, introduces termatiko sets, and offers heuristics and bounds to identify and mitigate these failure sets.
Findings
Failure of IPA linked to the presence of termatiko sets.
Adding redundant rows can reduce termatiko sets and improve recovery.
Bounds on termatiko distance depend on matrix structure and column weight.
Abstract
In this work, we perform a complete failure analysis of the interval-passing algorithm (IPA) for compressed sensing, an efficient iterative algorithm for reconstructing a -sparse nonnegative -dimensional real signal from a small number of linear measurements . In particular, we show that the IPA fails to recover from if and only if it fails to recover a corresponding binary vector of the same support, and also that only positions of nonzero values in the measurement matrix are of importance to the success of recovery. Based on this observation, we introduce termatiko sets and show that the IPA fails to fully recover if and only if the support of contains a nonempty termatiko set, thus giving a complete (graph-theoretic) description of the failing sets of the IPA. Two heuristics to…
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