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credit_assignment [2018/01/23 18:55]
admin
credit_assignment [2018/12/02 21:11]
admin
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 This paper explores an unconventional training method that uses alternating direction methods and Bregman iteration to train networks without gradient descent steps. ​ This paper explores an unconventional training method that uses alternating direction methods and Bregman iteration to train networks without gradient descent steps. ​
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 +https://​arxiv.org/​pdf/​1802.05642v1.pdf The Mechanics of n-Player Differentiable Games
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 +http://​www.jmlr.org/​papers/​volume18/​17-653/​17-653.pdf Maximum Principle Based Algorithms for Deep Learning