Deep Learning for Natural Language Processing: A Gentle Introduction - Tapa blanda

Surdeanu, Mihai

 
9781009012652: Deep Learning for Natural Language Processing: A Gentle Introduction

Sinopsis

Deep Learning is becoming increasingly important in a technology-dominated world. However, the building of computational models that accurately represent linguistic structures is complex, as it involves an in-depth knowledge of neural networks, and the understanding of advanced mathematical concepts such as calculus and statistics. This book makes these complexities accessible to those from a humanities and social sciences background, by providing a clear introduction to deep learning for natural language processing. It covers both theoretical and practical aspects, and assumes minimal knowledge of machine learning, explaining the theory behind natural language in an easy-to-read way. It includes pseudo code for the simpler algorithms discussed, and actual Python code for the more complicated architectures, using modern deep learning libraries such as PyTorch and Hugging Face. Providing the necessary theoretical foundation and practical tools, this book will enable readers to immediately begin building real-world, practical natural language processing systems.

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Acerca de los autores

Mihai Surdeanu is Associate Professor in the Computer Science Department at the University of Arizona. He works in both academia and industry on NLP systems that process and extract meaning from natural language.

Marco Antonio Valenzuela-Escárcega is a Research Scientist in the Computer Science department at the University of Arizona. He has worked on natural language processing projects in both industry and academia.

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9781316515662: Deep Learning for Natural Language Processing: A Gentle Introduction

Edición Destacada

ISBN 10:  1316515664 ISBN 13:  9781316515662
Editorial: Cambridge University Press, 2024
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