Natural Language Processing with Java Cookbook: Over 70 recipes to create linguistic and language translation applications using Java libraries

Natural Language Processing with Java Cookbook: Over 70 recipes to create linguistic and language translation applications using Java libraries
Natural Language Processing with Java Cookbook: Over 70 recipes to create linguistic and language translation applications using Java libraries by Richard M. Reese
English | 2019 | ISBN: 1789801156 | 386 Pages | EPUB | 10 MB

A problem-solution guide to encounter various NLP tasks utilizing Java open source libraries and cloud-based solutions
Natural Language Processing (NLP) has become one of the prime technologies for processing very large amounts of unstructured data from disparate information sources. This book includes a wide set of recipes and quick methods that solve challenges in text syntax, semantics, and speech tasks.
At the beginning of the book, you’ll learn important NLP techniques, such as identifying parts of speech, tagging words, and analyzing word semantics. You will learn how to perform lexical analysis and use machine learning techniques to speed up NLP operations. With independent recipes, you will explore techniques for customizing your existing NLP engines/models using Java libraries such as OpenNLP and the Stanford NLP library. You will also learn how to use NLP processing features from cloud-based sources, including Google and Amazon’s AWS. You will master core tasks, such as stemming, lemmatization, part-of-speech tagging, and named entity recognition. You will also learn about sentiment analysis, semantic text similarity, language identification, machine translation, and text summarization.
By the end of this book, you will be ready to become a professional NLP expert using a problem-solution approach to analyze any sort of text, sentences, or semantic words.
What you will learn

  • Explore how to use tokenizers in NLP processing
  • Implement NLP techniques in machine learning and deep learning applications
  • Identify sentences within the text and learn how to train specialized NER models
  • Learn how to classify documents and perform sentiment analysis
  • Find semantic similarities between text elements and extract text from a variety of sources
  • Preprocess text from a variety of data sources
  • Learn how to identify and translate languages