>
Fa   |   Ar   |   En
   from feature to paradigm: deep learning in machine translation  
   
نویسنده marta r.c.-j.
منبع journal of artificial intelligence research - 2018 - دوره : 61 - شماره : 0 - صفحه:947 -974
چکیده    In the last years, deep learning algorithms have highly revolutionized several areas including speech, image and natural language processing. the specific field of machine translation (mt) has not remained invariant. integration of deep learning in mt varies from re-modeling existing features into standard statistical systems to the development of a new architecture. among the different neural networks, research works use feedforward neural networks, recurrent neural networks and the encoder-decoder schema. these architectures are able to tackle challenges as having low-resources or morphology variations. this manuscript focuses on describing how these neural networks have been integrated to enhance different aspects and models from statistical mt, including language modeling, word alignment, translation, reordering, and rescoring. then, we report the new neural mt approach together with a description of the foundational related works and recent approaches on using subword, characters and training with multilingual languages, among others. finally, we include an analysis of the corresponding challenges and future work in using deep learning in mt. © 2018 ai access foundation. all rights reserved.
آدرس universitat politècnica de catalunya, talp research center, spain
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved