Syntax-based Statistical Machine Translation (Synthesis Lectures on Human Language Technologies) - Tapa blanda

Williams, Philip; Sennrich, Rico; Post, Matt

 
9781627059008: Syntax-based Statistical Machine Translation (Synthesis Lectures on Human Language Technologies)

Sinopsis

This unique book provides a comprehensive introduction to the most popular syntax-based statistical machine translation models, filling a gap in the current literature for researchers and developers in human language technologies. While phrase-based models have previously dominated the field, syntax-based approaches have proved a popular alternative, as they elegantly solve many of the shortcomings of phrase-based models. The heart of this book is a detailed introduction to decoding for syntax-based models.

The book begins with an overview of synchronous-context free grammar (SCFG) and synchronous tree-substitution grammar (STSG) along with their associated statistical models. It also describes how three popular instantiations (Hiero, SAMT, and GHKM) are learned from parallel corpora. It introduces and details hypergraphs and associated general algorithms, as well as algorithms for decoding with both tree and string input. Special attention is given to efficiency, including search approximations such as beam search and cube pruning, data structures, and parsing algorithms. The book consistently highlights the strengths (and limitations) of syntax-based approaches, including their ability to generalize phrase-based translation units, their modeling of specific linguistic phenomena, and their function of structuring the search space.

"Sinopsis" puede pertenecer a otra edición de este libro.

Acerca del autor

University of Edinburgh|Heidelberg University, Germany|Johns Hopkins University|Johns Hopkins University

"Sobre este título" puede pertenecer a otra edición de este libro.

Otras ediciones populares con el mismo título

9783031010361: Syntax-based Statistical Machine Translation (Synthesis Lectures on Human Language Technologies)

Edición Destacada

ISBN 10:  3031010361 ISBN 13:  9783031010361
Editorial: Springer, 2016
Tapa blanda