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Natural Language Processing: A Machine Learning Perspective

AUTHOR Teng, Zhiyang; Zhang, Yue
PUBLISHER Cambridge University Press (01/07/2021)
PRODUCT TYPE Hardcover (Hardcover)

Description
With a machine learning approach and less focus on linguistic details, this gentle introduction to natural language processing develops fundamental mathematical and deep learning models for NLP under a unified framework. NLP problems are systematically organised by their machine learning nature, including classification, sequence labelling, and sequence-to-sequence problems. Topics covered include statistical machine learning and deep learning models, text classification and structured prediction models, generative and discriminative models, supervised and unsupervised learning with latent variables, neural networks, and transition-based methods. Rich connections are drawn between concepts throughout the book, equipping students with the tools needed to establish a deep understanding of NLP solutions, adapt existing models, and confidently develop innovative models of their own. Featuring a host of examples, intuition, and end of chapter exercises, plus sample code available as an online resource, this textbook is an invaluable tool for the upper undergraduate and graduate student.
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Product Format
Product Details
ISBN-13: 9781108420211
ISBN-10: 1108420214
Binding: Hardback or Cased Book (Sewn)
Content Language: English
More Product Details
Page Count: 484
Carton Quantity: 9
Product Dimensions: 7.70 x 1.00 x 9.80 inches
Weight: 2.60 pound(s)
Feature Codes: Price on Product
Country of Origin: GB
Subject Information
BISAC Categories
Computers | Artificial Intelligence - Natural Language Processing
Descriptions, Reviews, Etc.
publisher marketing
With a machine learning approach and less focus on linguistic details, this gentle introduction to natural language processing develops fundamental mathematical and deep learning models for NLP under a unified framework. NLP problems are systematically organised by their machine learning nature, including classification, sequence labelling, and sequence-to-sequence problems. Topics covered include statistical machine learning and deep learning models, text classification and structured prediction models, generative and discriminative models, supervised and unsupervised learning with latent variables, neural networks, and transition-based methods. Rich connections are drawn between concepts throughout the book, equipping students with the tools needed to establish a deep understanding of NLP solutions, adapt existing models, and confidently develop innovative models of their own. Featuring a host of examples, intuition, and end of chapter exercises, plus sample code available as an online resource, this textbook is an invaluable tool for the upper undergraduate and graduate student.
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List Price $74.99
Your Price  $74.24
Hardcover