A reinforcement learning trained neural bidding policy improves solution quality over classical CBBA in decentralized multi-robot task allocation while preserving auction-consensus coordination.
Learning multi-robot task allocation using capsule networks and attention mechanism (cam)
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Auction-Consensus Algorithm with Learned Bidding Scheme for Multi-Robot Systems
A reinforcement learning trained neural bidding policy improves solution quality over classical CBBA in decentralized multi-robot task allocation while preserving auction-consensus coordination.