« Recurrent Neural Network » : différence entre les versions


Aucun résumé des modifications
(Page redirigée vers Réseau de neurones récurrent)
Ligne 1 : Ligne 1 :
== Domaine ==
#REDIRECTION [[ Réseau de neurones récurrent ]]
[[Category:Vocabulary]] Vocabulary
[[Catégorie:Apprentissage profond]] Apprentissage profond
== Définition ==
 
 
 
== Termes privilégiés ==
 
== Anglais ==
 
 
 
 
'''Recurrent Neural Network (RNN)'''
 
A RNN models sequential interactions through a hidden state, or memory. It can take up to N inputs and produce up to N outputs. For example, an input sequence may be a sentence with the outputs being the part-of-speech tag for each word (N-to-N). An input could be a sentence, and the output a sentiment classification of the sentence (N-to-1). An input could be a single image, and the output could be a sequence of words corresponding to the description of an image (1-to-N). At each time step, an RNN calculates a new hidden state (“memory”) based on the current input and the previous hidden state. The “recurrent” stems from the facts that at each step the same parameters are used and the network performs the same calculations based on different inputs.
• Understanding LSTM Networks
• Recurrent Neural Networks Tutorial, Part 1 – Introduction to RNNs

Version du 6 mai 2018 à 19:23

Contributeurs: Claude Coulombe, wiki