AI RESEARCH
CAMO: A Conditional Neural Solver for the Multi-objective Multiple Traveling Salesman Problem
arXiv CS.AI
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ArXi:2603.19074v1 Announce Type: cross Robotic systems often require a team of robots to collectively visit multiple targets while optimizing competing objectives, such as total travel cost and makespan. This setting can be formulated as the Multi-Objective Multiple Traveling Salesman Problem (MOMTSP). Although learning-based methods have shown strong performance on the single-agent TSP and multi-objective TSP variants, they rarely address the combined challenges of multi-agent coordination and multi-objective trade-offs, which.