FM4CO contains interesting research papers (1) using Existing Large Language Models for Combinatorial Optimization, and (2) building Domain Foundation Models for Combinatorial Optimization.
Most research utilizes existing FMs from language and vision domains to generate/improve solutions* or algorithms* (hyper-heuristic), yielding impressive results when integrated with problem-specific heuristics or general meta-heuristics. Other studies employ LLMs to investigate the interpretability* of COP solvers, automate* problem formulation, or simplify the use of domain-specific tools through text prompts. Given the capabilities of LLMs, this area of research is likely to garner increasing interest.
Developing a domain FM capable of solving a wide range of COPs presents an intriguing and formidable challenge. Recent efforts in this area aim towards this ambitious goal by creating a unified architecture or representation applicable across various COPs.
Date | Paper | Link | Problem | Venue |
---|---|---|---|---|
2023.05 | Efficient Training of Multi-task Combinatorial Neural Solver with Multi-armed Bandits | TSP,VRP,OP,KP |
arXiv | |
2024.02 | Multi-Task Learning for Routing Problem with Cross-Problem Zero-Shot Generalization | 16VRPs |
KDD 2024 | |
2024.03 | Towards a Generic Representation of Combinatorial Problems for Learning-Based Approaches | SAT,TSP,COL,KP |
arXiv | |
2024.04 | Cross-Problem Learning for Solving Vehicle Routing Problems | TSP,OP,PCTSP |
IJCAI 2024 | |
2024.05 | MVMoE: Multi-Task Vehicle Routing Solver with Mixture-of-Experts | 16VRPs |
ICML 2024 | |
2024.06 | RouteFinder: Towards Foundation Models for Vehicle Routing Problems | 24VRPs |
arXiv | |
2024.06 | GOAL: A Generalist Combinatorial Optimization Agent Learner | (A)TSP,4VRPs, OP,JSSP,UMSP, KP,MVC,MIS |
arXiv | |
2024.08 | UNCO: Towards Unifying Neural Combinatorial Optimization through Large Language Model | TSP,CVRP,KP, MVCP,SMTWTP |
arXiv | |
2024.09 | MAPF-GPT: Imitation Learning for Multi-Agent Pathfinding at Scale | MAPF |
arXiv |