Tuning Vector Parametrized Reinforcement Functions
نویسندگان
چکیده
Juan M. Santos [email protected] Andreas Matt [email protected] Claude F. Touzet [email protected] Depto.de Computación, FCEN; University of Buenos Aires; Cdad.Universitaria, Pab.I; Buenos Aires, Argentina Institute of Mathematics, University of Innsbruk, Viktor-Franz-Hess Haus, Technikerstr.25/7, A-6020 Innsbruck, Austria Laboratoire de Neurobiologie Humaine UMR 6265 ; University of Provence ; Av. Escadrille NormandieNiemen ; F 13397 Marseille Cedex 20, France CESAR-CSMD; Oak Ridge National Laboratory; P.O. Box 2008, Oak Ridge; TN 37831-635, USA
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