Shinsaku Sakaue
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Greedy and IHT algorithms for non-convex optimization with monotone costs of non-zeros

Apr 16, 2019·
Shinsaku Sakaue
· 0 min read
PDF
Type
Conference paper
Publication
International Conference on Artificial Intelligence and Statistics (AISTATS)
Last updated on Apr 16, 2019

← Beyond adaptive submodularity: Approximation guarantees of greedy policy with adaptive submodularity ratio Jul 1, 2019
Provable fast greedy compressive summarization with any monotone submodular function Jun 1, 2018 →

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