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Efficient solvers for Armijo's backtracking problem

Published 26 Oct 2021 in math.OC, cs.NA, and math.NA | (2110.14072v1)

Abstract: Backtracking is an inexact line search procedure that selects the first value in a sequence $x_0, x_0\beta, x_0\beta2...$ that satisfies $g(x)\leq 0$ on $\mathbb{R}+$ with $g(x)\leq 0$ iff $x\leq x*$. This procedure is widely used in descent direction optimization algorithms with Armijo-type conditions. It both returns an estimate in $(\beta x,x^]$ and enjoys an upper-bound $\lceil \log{\beta} \epsilon/x_0 \rceil$ on the number of function evaluations to terminate, with $\epsilon$ a lower bound on $x*$. The basic bracketing mechanism employed in several root-searching methods is adapted here for the purpose of performing inexact line searches, leading to a new class of inexact line search procedures. The traditional bisection algorithm for root-searching is transposed into a very simple method that completes the same inexact line search in at most $\lceil \log_2 \log_{\beta} \epsilon/x_0 \rceil$ function evaluations. A recent bracketing algorithm for root-searching which presents both minmax function evaluation cost (as the bisection algorithm) and superlinear convergence is also transposed, asymptotically requiring $\sim \log \log \log \epsilon/x_0 $ function evaluations for sufficiently smooth functions. Other bracketing algorithms for root-searching can be adapted in the same way. Numerical experiments suggest time savings of 50\% to 80\% in each call to the inexact search procedure.

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