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Martín et al., 2018 - Google Patents

Evodeep: a new evolutionary approach for automatic deep neural networks parametrisation

Martín et al., 2018

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Document ID
11995271212723442431
Author
Martín A
Lara-Cabrera R
Fuentes-Hurtado F
Naranjo V
Camacho D
Publication year
Publication venue
Journal of Parallel and Distributed Computing

External Links

Snippet

Abstract Deep Neural Networks (DNN) have become a powerful, and extremely popular mechanism, which has been widely used to solve problems of varied complexity, due to their ability to make models fitted to non-linear complex problems. Despite its well-known …
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