UniHetCO: A Unified Heterogeneous Representation for Multi-Problem Learning in Unsupervised Neural Combinatorial Optimization
arXiv cs.LG / 3/13/2026
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Key Points
- UniHetCO introduces a unified heterogeneous graph representation for constrained quadratic programming-based combinatorial optimization, enabling cross-problem learning across multiple problem classes without ground-truth labels.
- It encodes problem structure, objective terms, and linear constraints in a single input, allowing training a single model across different problem classes with a unified, label-free objective.
- The method uses a gradient-norm-based dynamic weighting scheme to mitigate gradient imbalance among classes and improve training stability in multi-problem learning.
- Empirical results on several datasets and four constrained problem classes demonstrate competitive performance with state-of-the-art unsupervised NCO baselines and show notable cross-problem adaptation potential and effective warm starts for a commercial classical solver under tight time limits.
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