Barriers for recent methods in geodesic optimization
Cole Franks, Philipp Reichenbach

TL;DR
This paper investigates the limitations of current optimization methods for geodesically convex problems like tensor scaling, showing exponential complexity barriers and motivating the development of more advanced algorithms.
Contribution
It demonstrates exponential lower bounds for array and tensor scaling problems and analyzes geometric complexity measures, highlighting the need for new optimization techniques.
Findings
Exponential diameter bounds for array and tensor scaling instances
Margin and gap measures are exponentially small in these problems
Polynomial diameter bounds are insufficient for polynomial-time algorithms
Abstract
We study a class of optimization problems including matrix scaling, matrix balancing, multidimensional array scaling, operator scaling, and tensor scaling that arise frequently in theory and in practice. Some of these problems, such as matrix and array scaling, are convex in the Euclidean sense, but others such as operator scaling and tensor scaling are geodesically convex on a different Riemannian manifold. Trust region methods, which include box-constrained Newton's method, are known to produce high precision solutions very quickly for matrix scaling and matrix balancing (Cohen et. al., FOCS 2017, Allen-Zhu et. al. FOCS 2017), and result in polynomial time algorithms for some geodesically convex problems like operator scaling (Garg et. al. STOC 2018, B\"urgisser et. al. FOCS 2019). One is led to ask whether these guarantees also hold for multidimensional array scaling and tensor…
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