Alternating minimization for dictionary learning: Local Convergence Guarantees
November 09, 2017 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Niladri S. Chatterji, Peter L. Bartlett
arXiv ID
1711.03634
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.LG
Citations
28
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
We present theoretical guarantees for an alternating minimization algorithm for the dictionary learning/sparse coding problem. The dictionary learning problem is to factorize vector samples $y^{1},y^{2},\ldots, y^{n}$ into an appropriate basis (dictionary) $A^*$ and sparse vectors $x^{1*},\ldots,x^{n*}$. Our algorithm is a simple alternating minimization procedure that switches between $\ell_1$ minimization and gradient descent in alternate steps. Dictionary learning and specifically alternating minimization algorithms for dictionary learning are well studied both theoretically and empirically. However, in contrast to previous theoretical analyses for this problem, we replace a condition on the operator norm (that is, the largest magnitude singular value) of the true underlying dictionary $A^*$ with a condition on the matrix infinity norm (that is, the largest magnitude term). Our guarantees are under a reasonable generative model that allows for dictionaries with growing operator norms, and can handle an arbitrary level of overcompleteness, while having sparsity that is information theoretically optimal. We also establish upper bounds on the sample complexity of our algorithm.
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