English

Improved Approximation Algorithms for Orthogonally Constrained Problems Using Semidefinite Optimization

Optimization and Control 2026-03-17 v4 Machine Learning Probability

Abstract

Building on the blueprint from Goemans and Williamson (1995) for the Max-Cut problem, we construct a polynomial-time approximation algorithm for orthogonally constrained quadratic optimization problems. First, we derive a semidefinite relaxation and propose a randomized rounding algorithm to generate feasible solutions from the relaxation. Second, we derive constant-factor approximation guarantees for our algorithm. When optimizing for mm orthonormal vectors in dimension nn, we leverage strong duality and semidefinite complementary slackness to show that our algorithm achieves a 1/31/3-approximation ratio. For any mm of the form 2q2^q for some integer qq, we also construct an instance where the performance of our algorithm is exactly (m+2)/(3m)(m+2)/(3m), which can be made arbitrarily close to 1/31/3 by taking m+m \rightarrow + \infty, hence showing that our analysis is tight.

Keywords

Cite

@article{arxiv.2501.02942,
  title  = {Improved Approximation Algorithms for Orthogonally Constrained Problems Using Semidefinite Optimization},
  author = {Ryan Cory-Wright and Jean Pauphilet},
  journal= {arXiv preprint arXiv:2501.02942},
  year   = {2026}
}

Comments

Improved algorithm with constant-factor approximation guarantee