Abstract

A new and transforming technology for natural language processing and speech processing is deep learning. Deep learning extends various operative ways to train computer systems for learning and it gives significant advances for that. If the right system or architecture is developed with deep learning methods then the systems can automatically learn from data itself without the requirement of designing it overtly. This technique of machine learning changes the perspective of addressing natural language and speech technologies considerably. Deep learning was first acquainting with Machine Translation in the standard statistical systems. This paper addresses the progress of introduction of deep learning in machine translation. It describes and includes all the topics like integrating deep learning in statistical machine translation, developing end-to-end neural machine translation systems, introducing deep learning in machine translation evaluation. Several research directions are drawn in terms of how deep learning can influence machine translation.

Highlights

  • There are many advances in machine learning techniques a day enhancing the capability of machine learning

  • This paper focuses on the various topics such as application of deep learning in statistical Machine Translation (MT), neural MT, interactive neural machine translation, how deep learning augments machine translation evaluation

  • One of the novice machine learning technique is deep learning that has been successfully applied to many extents of machine learning like image processing, speech processing and recognition, natural language processing etc

Read more

Summary

Alpana Upadhyay*

Received date: December 2, 2017; Accepted date: December 5, 2017; Published date: December 11, 2017.

Introduction
Statistical machine translation by deep learning
Research Viewpoints
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call