The perturbation analysis of nonconvex low-rank matrix robust recovery

06/11/2020
by   Jianwen Huang, et al.
0

In this paper, we bring forward a completely perturbed nonconvex Schatten p-minimization to address a model of completely perturbed low-rank matrix recovery. The paper that based on the restricted isometry property generalizes the investigation to a complete perturbation model thinking over not only noise but also perturbation, gives the restricted isometry property condition that guarantees the recovery of low-rank matrix and the corresponding reconstruction error bound. In particular, the analysis of the result reveals that in the case that p decreases 0 and a>1 for the complete perturbation and low-rank matrix, the condition is the optimal sufficient condition δ_2r<1<cit.>. The numerical experiments are conducted to show better performance, and provides outperformance of the nonconvex Schatten p-minimization method comparing with the convex nuclear norm minimization approach in the completely perturbed scenario.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset