EBOOK

Deep Learning for Natural Language Processing

Stephan Raaijmakers
(0)
Pages
296
Year
2022
Language
English

About

Explore the most challenging issues of natural language processing and learn how to solve them with cutting-edge deep learning!

Inside “Deep Learning for Natural Language Processing” you'll find a wealth of NLP insights, including:

An overview of NLP and deep learning

One-hot text representations

Word embeddings

Models for textual similarity

Sequential NLP

Semantic role labeling

Deep memory-based NLP

Linguistic structure

Hyperparameters for deep NLP

Deep learning has advanced natural language processing to exciting new levels and powerful new applications! For the first time, computer systems can achieve "human" levels of summarizing, making connections, and other tasks that require comprehension and context. “Deep Learning for Natural Language Processing” reveals the groundbreaking techniques that make these innovations possible. Stephan Raaijmakers distills his extensive knowledge into useful best practices, real-world applications, and the inner workings of top NLP algorithms.

About the technology

Deep learning has transformed the field of natural language processing. Neural networks recognize not just words and phrases, but also patterns. Models infer meaning from context, and determine emotional tone. Powerful deep learning-based NLP models open a goldmine of potential uses.

About the book

“Deep Learning for Natural Language Processing” teaches you how to create advanced NLP applications using Python and the Keras deep learning library. You'll learn to use state-of the-art tools and techniques including BERT and XLNET, multitask learning, and deep memory-based NLP. Fascinating examples give you hands-on experience with a variety of real world NLP applications. Plus, the detailed code discussions show you exactly how to adapt each example to your own uses!

What's inside

Improve question answering with sequential NLP

Boost performance with linguistic multitask learning

Accurately interpret linguistic structure

Master multiple word embedding techniques

About the reader

For readers with intermediate Python skills and a general knowledge of NLP. No experience with deep learning is required.


Table of Contents
PART 1 INTRODUCTION
1 Deep learning for NLP
2 Deep learning and language: The basics
3 Text embeddings
PART 2 DEEP NLP
4 Textual similarity
5 Sequential NLP
6 Episodic memory for NLP
PART 3 ADVANCED TOPICS
7 Attention
8 Multitask learning
9 Transformers
10 Applications of Transformers: Hands-on with BERT

Related Subjects

Artists