Local Identification of Overcomplete Dictionaries
Abstract
This paper presents the first theoretical results showing that stable identification of overcomplete μ-coherent dictionaries ∈ Rd× K is locally possible from training signals with sparsity levels S up to the order O(μ-2) and signal to noise ratios up to O(d). In particular the dictionary is recoverable as the local maximum of a new maximisation criterion that generalises the K-means criterion. For this maximisation criterion results for asymptotic exact recovery for sparsity levels up to O(μ-1) and stable recovery for sparsity levels up to O(μ-2) as well as signal to noise ratios up to O(d) are provided. These asymptotic results translate to finite sample size recovery results with high probability as long as the sample size N scales as O(K3dS -2), where the recovery precision can go down to the asymptotically achievable precision. Further, to actually find the local maxima of the new criterion, a very simple Iterative Thresholding and K (signed) Means algorithm (ITKM), which has complexity O(dKN) in each iteration, is presented and its local efficiency is demonstrated in several experiments.
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