Non-Euclidean High-Order Smooth Convex Optimization

Contreras, Juan Pablo, Guzmán, Cristóbal, Martínez-Rubio, David

arXiv.org Machine Learning 

We develop algorithms for the optimization of convex objectives that have H\"older continuous $q$-th derivatives with respect to a $p$-norm by using a $q$-th order oracle, for $p, q \geq 1$. We can also optimize other structured functions. We do this by developing a non-Euclidean inexact accelerated proximal point method that makes use of an inexact uniformly convex regularizer. We also provide nearly matching lower bounds for any deterministic algorithm that interacts with the function via a local oracle.

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