New Q-Newton's method meets Backtracking line search: good convergence guarantee, saddle points avoidance, quadratic rate of convergence, and easy implementation

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Publication:6375850

arXiv2108.10249MaRDI QIDQ6375850

Author name not available (Why is that?)

Publication date: 23 August 2021

Abstract: In a recent joint work, the author has developed a modification of Newton's method, named New Q-Newton's method, which can avoid saddle points and has quadratic rate of convergence. While good theoretical convergence guarantee has not been established for this method, experiments on small scale problems show that the method works very competitively against other well known modifications of Newton's method such as Adaptive Cubic Regularization and BFGS, as well as first order methods such as Unbounded Two-way Backtracking Gradient Descent. In this paper, we resolve the convergence guarantee issue by proposing a modification of New Q-Newton's method, named New Q-Newton's method Backtracking, which incorporates a more sophisticated use of hyperparameters and a Backtracking line search. This new method has very good theoretical guarantees, which for a {�f Morse function} yields the following (which is unknown for New Q-Newton's method): {�f Theorem.} Let f:mathbbRmightarrowmathbbR be a Morse function, that is all its critical points have invertible Hessian. Then for a sequence xn constructed by New Q-Newton's method Backtracking from a random initial point x0, we have the following two alternatives: i) limnightarrowinfty||xn||=infty, or ii) xn converges to a point xinfty which is a {�f local minimum} of f, and the rate of convergence is {�f quadratic}. Moreover, if f has compact sublevels, then only case ii) happens. As far as we know, for Morse functions, this is the best theoretical guarantee for iterative optimization algorithms so far in the literature. We have tested in experiments on small scale, with some further simplified versions of New Q-Newton's method Backtracking, and found that the new method significantly improve New Q-Newton's method.




Has companion code repository: https://github.com/tuyenttMathOslo/New-Q-Newton-s-method-Backtracking








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