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NEURAL REPRESENTATIONS OF NATURAL LANGUAGE IBD

SPRINGER
09 / 2018
9789811300615
Inglés

Sinopsis

This book offers an introduction to modern natural language processing using machine learning, focusing on how neural networks create a machine interpretable representation of the meaning of natural language. Language is crucially linked to ideas - as WebsterâÇÖs 1923 'English Composition and Literature' puts it: 'A sentence is a group of words expressing a complete thought'. Thus the representation of sentences and the words that make them up is vital in advancing artificial intelligence and other 'smart' systems currently being developed. Providing an overview of the research in the area, from Bengio et al.âÇÖs seminal work on a 'Neural Probabilistic Language Model' in 2003, to the latest techniques, this book enables readers to gain an understanding of how the techniques are related and what is best for their purposes. As well as a introduction to neural networks in general and recurrent neural networks in particular,áthis book details the methods used for representing words, senses of words, and larger structures such as sentences or documents.áThe bookáhighlights practical implementations and discusses many aspects that are often overlooked or misunderstood.áThe book includes thorough instruction on challenging areas such as hierarchicalásoftmax and negative sampling, to ensure the reader fully and easily understands the details of how the algorithms function.áCombining practical aspects with a more traditional review of the literature, it is directly applicable to a broad readership.áIt is an invaluable introduction for early graduate students working in natural language processing, a trustworthy guide for industry developers wishing to make use of recent innovations, and a sturdy bridgeáfor researchers already familiar with linguistics or machine learning wishing to understand the other.

PVP
122,11