Iterative Soft/Hard Thresholding with Homotopy Continuation for Sparse Recovery
Abstract: In this note, we analyze an iterative soft / hard thresholding algorithm with homotopy continuation for recovering a sparse signal $x\dag$ from noisy data of a noise level $\epsilon$. Under suitable regularity and sparsity conditions, we design a path along which the algorithm can find a solution $x*$ which admits a sharp reconstruction error $|x* - x\dag|_{\ell\infty} = O(\epsilon)$ with an iteration complexity $O(\frac{\ln \epsilon}{\ln \gamma} np)$, where $n$ and $p$ are problem dimensionality and $\gamma\in (0,1)$ controls the length of the path. Numerical examples are given to illustrate its performance.
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