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arxiv: 0812.1869 · v1 · submitted 2008-12-10 · 💻 cs.LG

Convex Sparse Matrix Factorizations

classification 💻 cs.LG
keywords convexformulationdecompositiondictionaryexplicitlocalnon-convexsize
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We present a convex formulation of dictionary learning for sparse signal decomposition. Convexity is obtained by replacing the usual explicit upper bound on the dictionary size by a convex rank-reducing term similar to the trace norm. In particular, our formulation introduces an explicit trade-off between size and sparsity of the decomposition of rectangular matrices. Using a large set of synthetic examples, we compare the estimation abilities of the convex and non-convex approaches, showing that while the convex formulation has a single local minimum, this may lead in some cases to performance which is inferior to the local minima of the non-convex formulation.

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