Fundamentals of Predictive Text Mining: Texts in Computer Science
Autor Sholom M. Weiss, Nitin Indurkhya, Tong Zhangen Limba Engleză Hardback – 14 sep 2015
Toate formatele și edițiile | Preț | Express |
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Paperback (2) | 302.59 lei 39-44 zile | |
SPRINGER LONDON – 29 oct 2016 | 302.59 lei 39-44 zile | |
SPRINGER LONDON – 5 sep 2012 | 358.24 lei 6-8 săpt. | |
Hardback (1) | 423.73 lei 39-44 zile | |
SPRINGER LONDON – 14 sep 2015 | 423.73 lei 39-44 zile |
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Specificații
ISBN-13: 9781447167495
ISBN-10: 144716749X
Pagini: 239
Ilustrații: XIII, 239 p. 115 illus.
Dimensiuni: 155 x 235 x 20 mm
Greutate: 0.54 kg
Ediția:2nd ed. 2015
Editura: SPRINGER LONDON
Colecția Springer
Seria Texts in Computer Science
Locul publicării:London, United Kingdom
ISBN-10: 144716749X
Pagini: 239
Ilustrații: XIII, 239 p. 115 illus.
Dimensiuni: 155 x 235 x 20 mm
Greutate: 0.54 kg
Ediția:2nd ed. 2015
Editura: SPRINGER LONDON
Colecția Springer
Seria Texts in Computer Science
Locul publicării:London, United Kingdom
Public țintă
Upper undergraduateCuprins
Overview of Text Mining.- From Textual Information to Numerical Vectors.- Using Text for Prediction.- Information Retrieval and Text Mining.- Finding Structure in a Document Collection.- Looking for Information in Documents.- Data Sources for Prediction: Databases, Hybrid Data and the Web.- Case Studies.- Emerging Directions.
Recenzii
“Fundamentals of predictive text mining is a second edition that is designed as a textbook, with questions and exercises in each chapter. … The book can be used with data mining software for hands-on experience for students. … The book will be very useful for people planning to go into this field or to learn techniques that could be used in a big data environment.” (S. Srinivasan, Computing Reviews, February, 2016)
Notă biografică
Dr. Sholom M. Weiss is a Professor Emeritus of Computer Science at Rutgers University, a Fellow of the Association for the Advancement of Artificial Intelligence, and co-founder of AI Data-Miner LLC, New York.
Dr. Nitin Indurkhya is faculty member at the School of Computer Science and Engineering, University of New South Wales, Australia, and the Institute of Statistical Education, Arlington, VA, USA. He is also a co-founder of AI Data-Miner LLC, New York.
Dr. Tong Zhang is a Professor of Statistics and Biostatistics at Rutgers University.
Dr. Nitin Indurkhya is faculty member at the School of Computer Science and Engineering, University of New South Wales, Australia, and the Institute of Statistical Education, Arlington, VA, USA. He is also a co-founder of AI Data-Miner LLC, New York.
Dr. Tong Zhang is a Professor of Statistics and Biostatistics at Rutgers University.
Textul de pe ultima copertă
This successful textbook on predictive text mining offers a unified perspective on a rapidly evolving field, integrating topics spanning the varied disciplines of data science, machine learning, databases, and computational linguistics. Serving also as a practical guide, this unique book provides helpful advice illustrated by examples and case studies.
This highly anticipated second edition has been thoroughly revised and expanded with new material on deep learning, graph models, mining social media, and errors and pitfalls in big data evaluation, Twitter sentiment analysis, and dependency parsing discussion. The fully updated content also features in-depth discussions on issues of document classification, information retrieval, clustering and organizing documents, information extraction, web-based data-sourcing, and prediction and evaluation.
Topics and features:
This highly anticipated second edition has been thoroughly revised and expanded with new material on deep learning, graph models, mining social media, and errors and pitfalls in big data evaluation, Twitter sentiment analysis, and dependency parsing discussion. The fully updated content also features in-depth discussions on issues of document classification, information retrieval, clustering and organizing documents, information extraction, web-based data-sourcing, and prediction and evaluation.
Topics and features:
- Presents a comprehensive, practical and easy-to-read introduction to text mining
- Includes chapter summaries, useful historical and bibliographic remarks, and classroom-tested exercises for each chapter
- Explores the application and utility of each method, as well as the optimum techniques for specific scenarios
- Provides several descriptive case studies that take readers from problem description to systems deployment in the real world
- Describes methods that rely on basic statistical techniques, thus allowing for relevance to all languages (not just English)
- Contains links to free downloadable industrial-quality text-mining software and other supplementary instruction material
Caracteristici
Presents a comprehensive, practical and easy-to-read introduction to text mining Updated and expanded with new content on deep learning, graph models, mining social media, and errors and pitfalls in big data evaluation Includes chapter summaries, classroom-tested exercises, and several descriptive case studies Includes supplementary material: sn.pub/extras Request lecturer material: sn.pub/lecturer-material