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Some recovery conditions for basis learning by L1-minimization
2008
2008 3rd International Symposium on Communications, Control and Signal Processing
Many recent works have shown that if a given signal admits a sufficiently sparse representation in a given dictionary, then this representation is recovered by several standard optimization algorithms, in particular the convex 1 minimization approach. Here we investigate the related problem of infering the dictionary from training data, with an approach where 1 minimization is used as a criterion to select a dictionary. We restrict our analysis to basis learning and identify necessary /
doi:10.1109/isccsp.2008.4537326
fatcat:mhemvoojgvebrbhzdhp43bjamu