Mind the Duality Gap: Logarithmic regret algorithms for online optimization
Shalev-shwartz, Shai, Kakade, Sham M.
–Neural Information Processing Systems
We describe a primal-dual framework for the design and analysis of online strongly convex optimization algorithms. Our framework yields the tightest known logarithmic regret bounds for Follow-The-Leader and for the gradient descent algorithm proposed in HazanKaKaAg06. We then show that one can interpolate between these two extreme cases. In particular, we derive a new algorithm that shares the computational simplicity of gradient descent but achieves lower regret in many practical situations. Finally, we further extend our framework for generalized strongly convex functions.
Neural Information Processing Systems
Dec-31-2009
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