Iterative Power Algorithm for Global Optimization with Quantics Tensor Trains
Micheline B. Soley, Paul Bergold, Victor S. Batista

TL;DR
The paper introduces the iterative power algorithm (IPA) using quantics tensor train representations for efficient global optimization in molecular chemistry, with proven convergence and ability to resolve multiple minima in complex landscapes.
Contribution
The paper presents a novel iterative power algorithm with convergence proof that employs QTT representations for global optimization in high-dimensional molecular potential energy surfaces.
Findings
Successfully optimized multidimensional PESs including DNA model and prime factorization problem.
Resolved multiple degenerate global minima separated by large energy barriers.
Demonstrated efficiency in high-dimensional, rugged landscapes.
Abstract
Optimization algorithms play a central role in chemistry since optimization is the computational keystone of most molecular and electronic structure calculations. Herein, we introduce the iterative power algorithm (IPA) for global optimization and a formal proof of convergence for both discrete and continuous global search problems, which is essential for applications in chemistry such as molecular geometry optimization. IPA implements the power iteration method in quantics tensor train (QTT) representations. Analogous to the imaginary time propagation method with infinite mass, IPA starts with an initial probability distribution and iteratively applies the recurrence relation , where is defined in terms of the potential energy surface (PES) . Upon convergence, the probability…
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