Deep Learning Evidence for Global Optimality of Gerver's Sofa
Kuangdai Leng, Jia Bi, Jaehoon Cha, Samuel Pinilla, Jeyan, Thiyagalingam

TL;DR
This paper uses neural networks and computational methods to support Gerver's shape as the globally optimal solution for the Moving Sofa Problem, providing strong evidence through continuous learning and discrete optimization.
Contribution
It introduces neural network-based approaches that relax previous assumptions, demonstrating convergence to Gerver's shape and improving existing upper bounds for the problem.
Findings
Neural networks converge to Gerver's shape from diverse initializations.
Upper bounds on sofa area are refined, approaching Gerver's known area.
The methods support Gerver's conjecture of optimality with high precision.
Abstract
The Moving Sofa Problem, formally proposed by Leo Moser in 1966, seeks to determine the largest area of a two-dimensional shape that can navigate through an -shaped corridor with unit width. The current best lower bound is about 2.2195, achieved by Joseph Gerver in 1992, though its global optimality remains unproven. In this paper, we investigate this problem by leveraging the universal approximation strength and computational efficiency of neural networks. We report two approaches, both supporting Gerver's conjecture that his shape is the unique global maximum. Our first approach is continuous function learning. We drop Gerver's assumptions that i) the rotation of the corridor is monotonic and symmetric and, ii) the trajectory of its corner as a function of rotation is continuously differentiable. We parameterize rotation and trajectory by independent piecewise linear neural…
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Taxonomy
TopicsReinforcement Learning in Robotics · Language and cultural evolution
