Current Approaches and Applications in Natural Language Processing

Current approaches to Natural Language Processing (NLP) have shown impressive improvements in many important tasks: machine translation, language modeling, text generation, sentiment/emotion analysis, natural language understanding, and question answering, among others. The advent of new methods and...

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Year of Publication:2022
Language:English
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spelling Montejo-Ráez, Arturo edt
Current Approaches and Applications in Natural Language Processing
Basel MDPI Books 2022
1 electronic resource (476 p.)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Current approaches to Natural Language Processing (NLP) have shown impressive improvements in many important tasks: machine translation, language modeling, text generation, sentiment/emotion analysis, natural language understanding, and question answering, among others. The advent of new methods and techniques, such as graph-based approaches, reinforcement learning, or deep learning, have boosted many NLP tasks to a human-level performance (and even beyond). This has attracted the interest of many companies, so new products and solutions can benefit from advances in this relevant area within the artificial intelligence domain.This Special Issue reprint, focusing on emerging techniques and trendy applications of NLP methods, reports on some of these achievements, establishing a useful reference for industry and researchers on cutting-edge human language technologies.
English
Technology: general issues bicssc
History of engineering & technology bicssc
natural language processing
distributional semantics
machine learning
language model
word embeddings
machine translation
sentiment analysis
quality estimation
neural machine translation
pretrained language model
multilingual pre-trained language model
WMT
neural networks
recurrent neural networks
named entity recognition
multi-modal dataset
Wikimedia Commons
multi-modal language model
concreteness
curriculum learning
electronic health records
clinical text
relationship extraction
text classification
linguistic corpus
deception
linguistic cues
statistical analysis
discriminant function analysis
fake news detection
stance detection
social media
abstractive summarization
monolingual models
multilingual models
transformer models
transfer learning
discourse analysis
problem-solution pattern
automatic classification
machine learning classifiers
deep neural networks
question answering
machine reading comprehension
query expansion
information retrieval
multinomial naive bayes
relevance feedback
cause-effect relation
transitive closure
word co-occurrence
automatic hate speech detection
multisource feature extraction
Latin American Spanish language models
fine-grained named entity recognition
k-stacked feature fusion
dual-stacked output
unbalanced data problem
document representation
semantic analysis
conceptual modeling
universal representation
trend analysis
topic modeling
Bert
geospatial data technology and application
attention model
dual multi-head attention
inter-information relationship
question difficult estimation
named-entity recognition
BERT model
conditional random field
pre-trained model
fine-tuning
feature fusion
attention mechanism
task-oriented dialogue systems
Arabic
multi-lingual transformer model
mT5
language marker
mental disorder
deep learning
LIWC
spaCy
RobBERT
fastText
LIME
conversational AI
intent detection
slot filling
retrieval-based question answering
query generation
entity linking
knowledge graph
entity embedding
global model
DISC model
personality recognition
predictive model
text analysis
data privacy
federated learning
transformer
3-0365-4439-9
3-0365-4440-2
Jiménez-Zafra, Salud María edt
Montejo-Ráez, Arturo oth
Jiménez-Zafra, Salud María oth
language English
format eBook
author2 Jiménez-Zafra, Salud María
Montejo-Ráez, Arturo
Jiménez-Zafra, Salud María
author_facet Jiménez-Zafra, Salud María
Montejo-Ráez, Arturo
Jiménez-Zafra, Salud María
author2_variant a m r amr
s m j z smj smjz
author2_role HerausgeberIn
Sonstige
Sonstige
title Current Approaches and Applications in Natural Language Processing
spellingShingle Current Approaches and Applications in Natural Language Processing
title_full Current Approaches and Applications in Natural Language Processing
title_fullStr Current Approaches and Applications in Natural Language Processing
title_full_unstemmed Current Approaches and Applications in Natural Language Processing
title_auth Current Approaches and Applications in Natural Language Processing
title_new Current Approaches and Applications in Natural Language Processing
title_sort current approaches and applications in natural language processing
publisher MDPI Books
publishDate 2022
physical 1 electronic resource (476 p.)
isbn 3-0365-4439-9
3-0365-4440-2
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