AI RESEARCH

Supplementary Materials to Graph Convolutional Branch and Bound

arXiv CS.LG

ArXi:2406.03099v4 Announce Type: replace This article explores the integration of deep learning models into combinatorial optimization pipelines, specifically targeting NP-hard problems. Traditional exact algorithms for such problems often rely on heuristic criteria to guide the exploration of feasible solutions. In this work, we propose using neural networks to learn informative heuristics, most notably, an optimality score that estimates a solution's proximity to the optimum.