Learning-induced Topological Effects on Dynamics in Neural Networks
نویسنده
چکیده
B. Siri Alchemy INRIA Orsay, France [email protected] H. Berry Alchemy INRIA Orsay, France [email protected] B. Cessac Institut Non Linéaire de Nice CNRS UMR6618 & UNSA Nice, France [email protected] B. Delord ANIM Inserm U742 & UPMC Paris, France [email protected] M. Quoy ETIS, CNRS UMR8051 & UCP-ENSEA Cergy-Pontoise, France [email protected] O. Temam Alchemy INRIA Orsay, France [email protected]
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