Effective Neural Approximations for Geometric Optimization Problems

Neural Information Processing Systems 

Neural networks offer a promising data-driven approach to tackle computationally challenging optimization problems. In this work, we introduce neural approximation frameworks for a family of geometric extent measure problems, including shape-fitting descriptors (e.g.