The Adaptive Complexity of Finding a Stationary Point
Huanjian Zhou, Andi Han, Akiko Takeda, Masashi Sugiyama

TL;DR
This paper investigates the minimal number of sequential rounds needed to find stationary points in non-convex optimization, establishing tight bounds and optimal algorithms for both high-dimensional and constant-dimensional cases.
Contribution
It provides tight lower bounds and optimal algorithms for the adaptive complexity of finding stationary points, extending understanding in high-dimensional and low-dimensional settings.
Findings
Lower bounds match the performance of known algorithms, proving their optimality.
Proposed an algorithm for constant-dimensional case that is asymptotically tight.
Established tight query complexity bounds for stationary point finding in various dimensions.
Abstract
In large-scale applications, such as machine learning, it is desirable to design non-convex optimization algorithms with a high degree of parallelization. In this work, we study the adaptive complexity of finding a stationary point, which is the minimal number of sequential rounds required to achieve stationarity given polynomially many queries executed in parallel at each round. For the high-dimensional case, i.e., , we show that for any (potentially randomized) algorithm, there exists a function with Lipschitz -th order derivatives such that the algorithm requires at least iterations to find an -stationary point. Our lower bounds are tight and show that even with queries per iteration, no algorithm has better convergence rate than those achievable with one-query-per-round…
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Taxonomy
TopicsComputability, Logic, AI Algorithms · Cognitive Science and Mapping
