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On the complexity of finding stationary points of smooth functions in one dimension (2209.07513v2)

Published 15 Sep 2022 in math.OC

Abstract: We characterize the query complexity of finding stationary points of one-dimensional non-convex but smooth functions. We consider four settings, based on whether the algorithms under consideration are deterministic or randomized, and whether the oracle outputs $1{\rm st}$-order or both $0{\rm th}$- and $1{\rm st}$-order information. Our results show that algorithms for this task provably benefit by incorporating either randomness or $0{\rm th}$-order information. Our results also show that, for every dimension $d \geq 1$, gradient descent is optimal among deterministic algorithms using $1{\rm st}$-order queries only.

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