Unifying mirror descent and dual averaging

30 Oct 2019  ·  Anatoli Juditsky, Joon Kwon, Éric Moulines ·

We introduce and analyze a new family of first-order optimization algorithms which generalizes and unifies both mirror descent and dual averaging. Within the framework of this family, we define new algorithms for constrained optimization that combines the advantages of mirror descent and dual averaging. Our preliminary simulation study shows that these new algorithms significantly outperform available methods in some situations.

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