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High-Order Oracle Complexity of Smooth and Strongly Convex Optimization

Abstract

In this note, we consider the complexity of optimizing a highly smooth (Lipschitz kk-th order derivative) and strongly convex function, via calls to a kk-th order oracle which returns the value and first kk derivatives of the function at a given point, and where the dimension is unrestricted. Extending the techniques introduced in Arjevani et al. [2019], we prove that the worst-case oracle complexity for any fixed kk to optimize the function up to accuracy ϵ\epsilon is on the order of (μkDk1λ)23k+1+loglog(1ϵ)\left(\frac{\mu_k D^{k-1}}{\lambda}\right)^{\frac{2}{3k+1}}+\log\log\left(\frac{1}{\epsilon}\right) (in sufficiently high dimension, and up to log factors independent of ϵ\epsilon), where μk\mu_k is the Lipschitz constant of the kk-th derivative, DD is the initial distance to the optimum, and λ\lambda is the strong convexity parameter.

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