Natural language processing with Java and LingPipe cookbook : over 60 effective recipes to develop your natural language processing (NLP) skills quickly and effectively / Breck Baldwin, Krishna Dayanidhi.
Material type: TextSeries: Quick answers to common problemsPublisher: Birmingham : Packt Publishing, [2014]Copyright date: ©2014Description: 1 online resourceContent type:- text
- computer
- online resource
- 1322348537
- 9781322348537
- 9781783284689
- 1783284684
- 1783284676
- 9781783284672
- LingPipe (Electronic resource)
- LingPipe (Electronic resource)
- Natural language processing (Computer science)
- Java (Computer program language)
- Traitement automatique des langues naturelles
- Java (Langage de programmation)
- COMPUTERS -- Programming Languages -- General
- COMPUTERS -- Programming Languages -- Java
- Java (Computer program language)
- Natural language processing (Computer science)
- 006.35 23
- QA76.9.N38
Item type | Home library | Collection | Call number | Materials specified | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|---|
Electronic-Books | OPJGU Sonepat- Campus | E-Books EBSCO | Available |
Includes bibliographical references and index.
Annotation This book is for experienced Java developers with NLP needs, whether academics, industrialists, or hobbyists. A basic knowledge of NLP terminology will be beneficial.
Cover; Copyright; Credits; About the Authors; About the Reviewers; www.PacktPub.com; Table of Contents; Preface; Chapter 1: Simple Classifiers; Introduction; Deserializing and running a classifier; Getting confidence estimates from a classifier; Getting data from the Twitter API; Applying a classifier to a .csv file; Evaluation of classifiers -- the confusion matrix; Training your own language model classifier; How to train and evaluate with cross validation; Viewing error categories -- false positives; Understanding precision and recall; How to serialize a LingPipe object -- classifier example
Eliminate near duplicates with the Jaccard distanceHow to classify sentiment -- simple version; Chapter 2: Finding and Working with Words; Introduction; Introduction to tokenizer factories -- finding words in a character stream; Combining tokenizers -- lowercase tokenizer; Combining tokenizers -- stop word tokenizers; Using Lucene/Solr tokenizers; Using Lucene/Solr tokenizers with LingPipe; Evaluating tokenizers with unit tests; Modifying tokenizer factories; Finding words for languages without white spaces; Chapter 3: Advanced Classifiers; Introduction; A simple classifier
Language model classifier with tokensNaïve Bayes; Feature extractors; Logistic regression; Multithreaded cross validation; Tuning parameters in logistic regression; Customizing feature extraction; Combining feature extractors; Classifier-building life cycle; Linguistic tuning; Thresholding classifiers; Train a little, learn a little -- active learning; Annotation; Chapter 4: Tagging Words and Tokens; Introduction; Interesting phrase detection; Foreground- or background-driven interesting phrase detection; Hidden Markov Models (HMM) -- part-of-speech; N-best word tagging
Confidence-based taggingTraining word tagging; Word-tagging evaluation; Conditional random fields (CRF) for word/token tagging; Modifying CRFs; Chapter 5: Finding Spans in Text -- Chunking; Introduction; Sentence detection; Evaluation of sentence detection; Tuning sentence detection; Marking embedded chunks in a string -- sentence chunk example; Paragraph detection; Simple noun phrases and verb phrases; Regular expression-based chunking for NER; Dictionary-based chunking for NER; Translating between word tagging and chunks -- BIO codec; HMM-based NER; Mixing the NER sources; CRFs for chunking
NER using CRFs with better featuresChapter 6: String Comparison and Clustering; Introduction; Distance and proximity -- simple edit distance; Weighted edit distance; The Jaccard distance; The Tf-Idf distance; Using edit distance and language models for spelling correction; The case restoring corrector; Automatic phrase completion; Single-link and complete-link clustering using edit distance; Latent Dirichlet allocation (LDA) for multitopic clustering; Chapter 7: Finding Coreference Between Concepts/People; Introduction; Named entity coreference with a document; Adding pronouns to coreference
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