Free delivery for purchases over 59.99 €
Slovak post 4.49 SPS courier 4.99 GLS courier 3.99 GLS point 2.99 Packeta courier 4.99 Packeta point 2.99 SPS Parcel Shop 2.99

Language EnglishEnglish
Book Paperback
Book Text Mining Sholom M. Weiss
Libristo code: 01421712
Publishers Springer-Verlag New York Inc., October 2010
The growth of the web can be seen as an expanding public digital library collection. Online digital... Full description
? points 467 b
186.62
Low in stock at our supplier Shipping in 13-16 days

30-day return policy


You might also be interested in


Data Mining Charu C. Aggarwal / Hardback
common.buy 76.52
Text Mining Sholom M. Weiss / Hardback
common.buy 186.62
Lotus 18 Ian Wagstaff / Hardback
common.buy 89.87
Thoughtful Machine Learning with Python Matthew Kirk / Paperback
common.buy 47.10
Mining Text Data Charu C. Aggarwal / Hardback
common.buy 273.66
Procurement Systems Steve Rowlinson / Hardback
common.buy 197.54
George Washington at Head Quarters, Dobbs Ferry Mary Sudman Donovan / Hardback
common.buy 25.87
Chinese Publishing Hu Yang / Paperback
common.buy 29.11
Ironwolfe: Book One of the Triads of Tir na n'Og Darragh Metzger / Paperback
common.buy 23.44
Sugar and Slavery, Family and Race Pierre Dessalles / Paperback
common.buy 36.49
Cadbury Committee Laura F Spira / Hardback
common.buy 111.70
Nuclear Reactor Engineering Samuel Glasstone / Paperback
common.buy 197.44

The growth of the web can be seen as an expanding public digital library collection. Online digital information extends far beyond the web and its publicly available information. Huge amounts of information are private and are of interest to local communities, such as the records of customers of a business.§This information is overwhelmingly text and has its record-keeping purpose, but an automated analysis might be desirable to find patterns in the stored records. Analogous to this data mining is text mining, which also finds patterns and trends in information samples but which does so with far less structured--though with greater immediate utility for users--ingredients.§This book focuses on the concepts and methods needed to expand horizons beyond structured, numeric data to automated mining of text samples. It introduces the new world of text mining and examines proven methods for various critical text-mining tasks, such as automated document indexing and information retrieval and search. New research areas are explored, such as information extraction and document summarization, that rely on evolving text-mining techniques.The growth of the web can be seen as an expanding public digital library collection. Online digital information extends far beyond the web and its publicly available information. Huge amounts of information are private and are of interest to local communities, such as the records of customers of a business. This information is overwhelmingly text and has its record-keeping purpose, but an automated analysis might be desirable to find patterns in the stored records. Analogous to this data mining is text mining, which also finds patterns and trends in information samples but which does so with far less structured--though with greater immediate utility for users--ingredients. This book focuses on the concepts and methods needed to expand horizons beyond structured, numeric data to automated mining of text samples. It introduces the new world of text mining and examines proven methods for various critical text-mining tasks, such as automated document indexing and information retrieval and search. New research areas are explored, such as information extraction and document summarization, that rely on evolving text-mining techniques.One consequence of the pervasive use of computers is that most documents originate in digital form. Text mining the process of searching, retrieving, and analyzing unstructured, natural-language text is concerned with how to exploit the textual data embedded in these documents.§Text Mining presents a comprehensive introduction and overview of the field, integrating related topics (such as artificial intelligence and knowledge discovery and data mining) and providing practical advice on how readers can use text-mining methods to analyze their own data. Emphasizing predictive methods, the book unifies all key areas in text mining: preprocessing, text categorization, information search and retrieval, clustering of documents, and information extraction. In addition, it identifies emerging directions for those looking to do research in the area. Some background in data mining is beneficial, but not essential.§Topics and features:§Presents a comprehensive and easy-to-read introduction to text mining§Explores the application and utility of the methods, as well as the optimal techniques for specific scenarios §Provides several descriptive case studies that take readers from problem description to system deployment in the real world§Uses methods that rely on basic statistical techniques, thus allowing for relevance to all languages (not just English)§Includes access to downloadable software (runs on any computer), as well as useful chapter-ending historical and bibliographical remarks, a detailed bibliography, and subject and author indexes§This authoritative and highly accessible text, written by a team of authorities on text mining, develops the foundation concepts, principles, and methods needed to expand beyond structured, numeric data to automated mining of text samples. Researchers, computer scientists, and advanced undergraduates and graduates with work and interests in data mining, machine learning, databases, and computational linguistics will find the work an essential resource.

Give this book today
It's easy
1 Add to cart and choose Deliver as present at the checkout 2 We'll send you a voucher 3 The book will arrive at the recipient's address

Login

Log in to your account. Don't have a Libristo account? Create one now!

 
mandatory
mandatory

Don’t have an account? Discover the benefits of having a Libristo account!

With a Libristo account, you'll have everything under control.

Create a Libristo account