Reinforcement learning and recruitment mechanism for adaptive distributed control

Annual Review in Automatic Programming - Tập 17 - Trang 467-473 - 1992
H. Bersini1
1IRIDIA — Université Libre de Bruxelles CP 194/6,50 av. Fr. Roosevelt, B-1050 Bruxelles, Belgium

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