Title :
Complete dictionary recovery over the sphere
Author :
Ju Sun ; Qing Qu ; Wright, John
Abstract :
We consider the problem of recovering a complete (i.e., square and invertible) dictionary A0, from Y = A0X0 with Y ϵ Rn×p. This recovery setting is central to the theoretical understanding of dictionary learning. We give the first efficient algorithm that provably recovers A0 when X0 has O (n) nonzeros per column, under suitable probability model for X0. Prior results provide recovery guarantees when X0 has only O (√n) nonzeros per column. Our algorithm is based on nonconvex optimization with a spherical constraint, and hence is naturally phrased in the language of manifold optimization. Our proofs give a geometric characterization of the high-dimensional objective landscape, which shows that with high probability there are no spurious local minima. This invited talk summarizes these results, presented in [1]. It also presents numerical experiments demonstrating their implications for practical problems in representation learning and the more general algorithmic problem of recovering matrix decompositions with structured factors.
Keywords :
concave programming; matrix decomposition; probability; signal representation; complete dictionary recovery; dictionary learning representation; high-dimensional objective landscape geometric characterization; manifold optimization; matrix decomposition recovery; nonconvex optimization; probability model; spherical constraint; Algorithm design and analysis; Dictionaries; Geometry; Minimization; Optimization; Sparse matrices; Sun; Dictionary learning; Geometric analysis; Nonconvex optimization; Recovery guarantee; Riemannian trustregion method;
Conference_Titel :
Sampling Theory and Applications (SampTA), 2015 International Conference on
Conference_Location :
Washington, DC
DOI :
10.1109/SAMPTA.2015.7148922