Title :
Dropout Improves Recurrent Neural Networks for Handwriting Recognition
Author :
Pham, Vu ; Bluche, Theodore ; Kermorvant, Christopher ; Louradour, Jerome
Author_Institution :
A2iA, Paris, France
Abstract :
Recurrent neural networks (RNNs) with Long Short-Term memory cells currently hold the best known results in unconstrained handwriting recognition. We show that their performance can be greatly improved using dropout - a recently proposed regularization method for deep architectures. While previous works showed that dropout gave superior performance in the context of convolutional networks, it had never been applied to RNNs. In our approach, dropout is carefully used in the network so that it does not affect the recurrent connections, hence the power of RNNs in modeling sequences is preserved. Extensive experiments on a broad range of handwritten databases confirm the effectiveness of dropout on deep architectures even when the network mainly consists of recurrent and shared connections.
Keywords :
handwriting recognition; recurrent neural nets; RNN; convolutional network; dropout; handwritten databases; long short-term memory cells; recurrent connection; recurrent neural network; regularization method; unconstrained handwriting recognition; Computer architecture; Databases; Error analysis; Handwriting recognition; Hidden Markov models; Recurrent neural networks; Training; Dropout; Handwriting Recognition; Recurrent Neural Networks;
Conference_Titel :
Frontiers in Handwriting Recognition (ICFHR), 2014 14th International Conference on
Conference_Location :
Heraklion
Print_ISBN :
978-1-4799-4335-7
DOI :
10.1109/ICFHR.2014.55