תקציר
Arbitrary matrices M ∈ Rm×n, randomly perturbed in an additive manner using a random matrix R ∈ Rm×n, are shown to asymptotically almost surely satisfy the so-called robust null space property. Whilst insisting on an asymptotically optimal order of magnitude for m required to attain unique reconstruction via ℓ1-minimisation algorithms, our results track the level of arbitrariness allowed for the fixed seed matrix M as well as the degree of distributional irregularity allowed for the entries of the perturbing matrix R. Starting with sub-gaussian entries for R, our results culminate with these allowed to have substantially heavier tails than sub-exponential ones. Throughout this trajectory, two measures control the arbitrariness allowed for M; the first is ∥M∥∞ and the second is a localised notion of the Frobenius norm of M (which depends on the sparsity of the signal being reconstructed). A key tool driving our proofs is Mendelson’s small-ball method (Learning without concentration, J. ACM, Vol. 62, 2015).
| שפה מקורית | אנגלית |
|---|---|
| עמודים (מ-עד) | 4399-4414 |
| מספר עמודים | 16 |
| כתב עת | IEEE Transactions on Information Theory |
| כרך | 72 |
| מספר גיליון | 6 |
| מזהי עצם דיגיטלי (DOIs) | |
| סטטוס פרסום | התקבל/בדפוס - 2026 |
טביעת אצבע
להלן מוצגים תחומי המחקר של הפרסום 'Smoothed analysis in compressed sensing'. יחד הם יוצרים טביעת אצבע ייחודית.פורמט ציטוט ביבליוגרפי
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