Cart
Free Shipping in the UK
Proud to be B-Corp

Text Analytics John Atkinson-Abutridy

Text Analytics By John Atkinson-Abutridy

Text Analytics by John Atkinson-Abutridy


£58.29
Condition - New
Only 2 left

Summary

Text Analytics: An Introduction to the Science and Applications of Unstructured Information Analysis is a concise and accessible introduction to the science and applications of text analytics (or text mining), which enables automatic knowledge discovery from unstructured information sources, both for industrial and academic purposes.

Text Analytics Summary

Text Analytics: An Introduction to the Science and Applications of Unstructured Information Analysis by John Atkinson-Abutridy

  • Easy-to-follow step-by-step concepts and methods.
  • Every chapter is introduced in a very gentle and intuitive way so students can understand the WHYs, WHAT-IFs, WHAT-IS-THIS-FORs, HOWs, etc by themselves.
  • Practical programming exercises in Python for each chapter.
  • Includes theory and practice for every chapter, summaries, practical coding exercises for target problems, QA, and a companion website with the sample code and data.

About John Atkinson-Abutridy

John Atkinson-Abutridy has been a university professor and researcher over the last 25 years. He received a PhD in Artificial Intelligence (AI) from the University of Edinburgh (UK), and has led scientific and technological projects both at national and international levels on several AI topics including Natural-Language Processing, Machine Learning, Evolutionary Computation, and Text Mining, and has published almost 100 peer review scientific articles in journals and conferences. Furthermore, he has been AI consultant and transferred some intelligent system technologies into the industry. Dr. Atkinson-Abutridy has been a visiting researcher/professor in several universities and research centers worldwide such as the University of Cambridge (UK), MIT (USA), IBM T.J. Watson Labs (USA), and INRIA (France). He is also a professional member of the AAAI and a senior member of the ACM.

Table of Contents

1 TEXT ANALYTICS. 1.1 INTRODUCTION 1.2 TEXT MINING AND TEXT ANALYTICS 1.3 TASKS AND APPLICATIONS 1.4 THE TEXT ANALYTICS PROCESS 1.5 SUMMARY 1.6 QUESTIONS 2 NATURAL-LANGUAGE PROCESSING 2.1 INTRODUCTION 2.2 THE SCOPE OF NATURAL-LANGUAGE PROCESSING 2.3 NLP LEVELS AND TASKS 2.3.1 Phonology 2.3.2 Morphology 2.3.3 Lexicon 2.3.4 Syntax 2.3.5 Semantic 2.3.6 Reasoning and Pragmatics 2.1 SUMMARY 2.2 EXERCISES 2.2.1 Morphological Analysis 2.2.2 Lexical Analysis 2.2.3 Syntactic Analysis 3 INFORMATION EXTRACTION 3.1 INTRODUCTION 3.2 RULE-BASED INFORMATION EXTRACTION 3.3 NAMED-ENTITY RECOGNITION 3.3.1 N-Gram Models 3.4 RELATION EXTRACTION 3.5 EVALUATION 3.1 SUMMARY 3.2 EXERCISE 3.2.1 Regular Expressions 3.2.2 Named-Entity Recognition 4 DOCUMENT REPRESENTATION 4.1 INTRODUCTION 4.2 DOCUMENT INDEXING 4.3 VECTOR SPACE MODELS 4.3.1 Boolean Representation Model 4.3.2 Term Frequency Model 4.3.3 Inverse Document Frequency Model 4.1 SUMMARY 4.2 EXERCISES 4.2.1 TFxIDF Representation Model 5 ASSOCIATION RULES MINING 5. INTRODUCTION 5.2 ASSOCIATION PATTERNS 5.3 EVALUATION 5.3.1 Support 5.3.2Confidence 5.3.3 Lift 5.4 ASSOCIATION RULES GENERATION 5.1 SUMMARY 5.2 EXERCISES 5.2.1 Extraction of Association Rules 6 CORPUS-BASED SEMANTIC ANALYSIS 6.1 INTRODUCTION 6.2 CORPUS-BASED SEMANTIC ANALYSIS 6.3 LATENT SEMANTIC ANALYSIS 6.3.1 Creating Vectors with LSA 6.4 WORD2VEC 6.4.1 Embedding Learning 6.4.2 Prediction and Embeddings Interpretation 6.1 SUMMARY 6.2 EXERCISES 6.2.1 Latent Semantic Analysis 6.2. Word Embedding with Word2Vec 7 DOCUMENT CLUSTERING 7.1 INTRODUCTION 7.2 DOCUMENT CLUSTERING 7.3K-MEANS CLUSTERING 7.4 SELF-ORGANIZING MAP 7.4.1Topological Maps Learning 7.1 SUMMARY 7.2 EXERCISES 7.2.1 K-means Clustering 7.2.2 Self-Organizing Maps 8 TOPIC MODELING 8.1 INTRODUCTIO 8.2TOPIC MODELING 8.3 LATENT DIRICHLET ALLOCATION 8.4 EVALUATION 8.1 SUMMARY 8.2 EXERCISES 8.2.1 Modeling Topics with LDA 9 DOCUMENT CATEGORIZATION 9.1INTRODUCTION 9.2 CATEGORIZATION MODELS 9.3 BAYESIAN TEXT CATEGORIZATION 9.4 MAXIMUM ENTROPY CATEGORIZATION 9.5 EVALUATION 9.1 SUMMARY 9.2 EXERCISES 9.2.1 Naive Bayes Categorization 9.2.2 MaxEnt Categorization

Additional information

NPB9781032245263
9781032245263
1032245263
Text Analytics: An Introduction to the Science and Applications of Unstructured Information Analysis by John Atkinson-Abutridy
New
Paperback
Taylor & Francis Ltd
2022-04-29
230
N/A
Book picture is for illustrative purposes only, actual binding, cover or edition may vary.
This is a new book - be the first to read this copy. With untouched pages and a perfect binding, your brand new copy is ready to be opened for the first time

Customer Reviews - Text Analytics