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BOPO: Neural Combinatorial Optimization via Best-anchored and Objective-guided Preference Optimization

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Neural Combinatorial Optimization (NCO) has emerged as a promising approach for NP-hard problems. However, prevailing RL-based methods suffer from low sample efficiency due to sparse rewards and underused solutions. We propose Best-anchored and Objective-guided Preference Optimization (BOPO), a training paradigm that leverages solution preferences via objective values. It introduces: (1) a best-anchored preference pair construction for better explore and exploit solutions, and (2) an objective-guided pairwise loss function that adaptively scales gradients via objective differences, removing reliance on reward models or reference policies. Experiments on Job-shop Scheduling Problem (JSP), Traveling Salesman Problem (TSP), and Flexible Job-shop Scheduling Problem (FJSP) show BOPO outperforms state-of-the-art neural methods, reducing optimality gaps impressively with efficient inference. BOPO is architecture-agnostic, enabling seamless integration with existing NCO models, and establishes preference optimization as a principled framework for combinatorial optimization.

Zijun Liao, Jinbiao Chen, Debing Wang, Zizhen Zhang, Jiahai Wang• 2025

Related benchmarks

TaskDatasetResultRank
Traveling Salesman ProblemEuclidean TSP n=100 Uniform distribution in unit square (test)
Tour Length7.771
27
Traveling Salesman ProblemEuclidean TSP n=500 Uniform distribution in unit square (test)
Tour Length19.109
27
Traveling Salesman ProblemUniform Distribution n=200 (test)
Objective Value10.88
13
Traveling Salesman ProblemUniform Distribution n=1000 (test)
Objective Value29.571
13
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