id |
oapen-20.500.12657-39974
|
record_format |
dspace
|
spelling |
oapen-20.500.12657-399742020-07-15T00:33:48Z Representation Learning for Natural Language Processing Liu, Zhiyuan Lin, Yankai Sun, Maosong Natural Language Processing (NLP) Computational Linguistics Artificial Intelligence Data Mining and Knowledge Discovery Open Access Deep Learning Representation Learning Knowledge Representation Word Representation Document Representation Big Data Machine Learning Natural Language Processing Natural language & machine translation Computational linguistics Artificial intelligence Data mining Expert systems / knowledge-based systems bic Book Industry Communication::U Computing & information technology::UY Computer science::UYQ Artificial intelligence::UYQL Natural language & machine translation bic Book Industry Communication::C Language::CF linguistics::CFX Computational linguistics bic Book Industry Communication::U Computing & information technology::UY Computer science::UYQ Artificial intelligence bic Book Industry Communication::U Computing & information technology::UN Databases::UNF Data mining This open access book provides an overview of the recent advances in representation learning theory, algorithms and applications for natural language processing (NLP). It is divided into three parts. Part I presents the representation learning techniques for multiple language entries, including words, phrases, sentences and documents. Part II then introduces the representation techniques for those objects that are closely related to NLP, including entity-based world knowledge, sememe-based linguistic knowledge, networks, and cross-modal entries. Lastly, Part III provides open resource tools for representation learning techniques, and discusses the remaining challenges and future research directions. The theories and algorithms of representation learning presented can also benefit other related domains such as machine learning, social network analysis, semantic Web, information retrieval, data mining and computational biology. This book is intended for advanced undergraduate and graduate students, post-doctoral fellows, researchers, lecturers, and industrial engineers, as well as anyone interested in representation learning and natural language processing. 2020-07-14T07:18:21Z 2020-07-14T07:18:21Z 2020 book ONIX_20200714_9789811555732_9 https://library.oapen.org/handle/20.500.12657/39974 eng application/pdf n/a 2020_Book_RepresentationLearningForNatur.pdf https://www.springer.com/9789811555732 Springer Nature Springer 10.1007/978-981-15-5573-2 10.1007/978-981-15-5573-2 6c6992af-b843-4f46-859c-f6e9998e40d5 Springer 334 open access
|
institution |
OAPEN
|
collection |
DSpace
|
language |
English
|
description |
This open access book provides an overview of the recent advances in representation learning theory, algorithms and applications for natural language processing (NLP). It is divided into three parts. Part I presents the representation learning techniques for multiple language entries, including words, phrases, sentences and documents. Part II then introduces the representation techniques for those objects that are closely related to NLP, including entity-based world knowledge, sememe-based linguistic knowledge, networks, and cross-modal entries. Lastly, Part III provides open resource tools for representation learning techniques, and discusses the remaining challenges and future research directions. The theories and algorithms of representation learning presented can also benefit other related domains such as machine learning, social network analysis, semantic Web, information retrieval, data mining and computational biology. This book is intended for advanced undergraduate and graduate students, post-doctoral fellows, researchers, lecturers, and industrial engineers, as well as anyone interested in representation learning and natural language processing.
|
title |
2020_Book_RepresentationLearningForNatur.pdf
|
spellingShingle |
2020_Book_RepresentationLearningForNatur.pdf
|
title_short |
2020_Book_RepresentationLearningForNatur.pdf
|
title_full |
2020_Book_RepresentationLearningForNatur.pdf
|
title_fullStr |
2020_Book_RepresentationLearningForNatur.pdf
|
title_full_unstemmed |
2020_Book_RepresentationLearningForNatur.pdf
|
title_sort |
2020_book_representationlearningfornatur.pdf
|
publisher |
Springer Nature
|
publishDate |
2020
|
url |
https://www.springer.com/9789811555732
|
_version_ |
1771297549696630784
|