A new ensemble for connected solutions in CSPs reveals a stable cluster of delocalized solutions in the symmetric binary perceptron up to a critical threshold κ_no-mem_loc.stab. that conventional approaches miss.
Statistical physics-based reconstruction in compressed sensing
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Compressed sensing is triggering a major evolution in signal acquisition. It consists in sampling a sparse signal at low rate and later using computational power for its exact reconstruction, so that only the necessary information is measured. Currently used reconstruction techniques are, however, limited to acquisition rates larger than the true density of the signal. We design a new procedure which is able to reconstruct exactly the signal with a number of measurements that approaches the theoretical limit in the limit of large systems. It is based on the joint use of three essential ingredients: a probabilistic approach to signal reconstruction, a message-passing algorithm adapted from belief propagation, and a careful design of the measurement matrix inspired from the theory of crystal nucleation. The performance of this new algorithm is analyzed by statistical physics methods. The obtained improvement is confirmed by numerical studies of several cases.
fields
cond-mat.dis-nn 1years
2025 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Finding the right path: statistical mechanics of connected solutions in constraint satisfaction problems
A new ensemble for connected solutions in CSPs reveals a stable cluster of delocalized solutions in the symmetric binary perceptron up to a critical threshold κ_no-mem_loc.stab. that conventional approaches miss.