Practical Text Mining with Perl

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John Wiley & Sons, Sep 20, 2011 - Computers - 320 pages
Provides readers with the methods, algorithms, and means to perform text mining tasks

This book is devoted to the fundamentals of text mining using Perl, an open-source programming tool that is freely available via the Internet (www.perl.org). It covers mining ideas from several perspectives--statistics, data mining, linguistics, and information retrieval--and provides readers with the means to successfully complete text mining tasks on their own.

The book begins with an introduction to regular expressions, a text pattern methodology, and quantitative text summaries, all of which are fundamental tools of analyzing text. Then, it builds upon this foundation to explore:

  • Probability and texts, including the bag-of-words model
  • Information retrieval techniques such as the TF-IDF similarity measure
  • Concordance lines and corpus linguistics
  • Multivariate techniques such as correlation, principal components analysis, and clustering
  • Perl modules, German, and permutation tests

Each chapter is devoted to a single key topic, and the author carefully and thoughtfully introduces mathematical concepts as they arise, allowing readers to learn as they go without having to refer to additional books. The inclusion of numerous exercises and worked-out examples further complements the book's student-friendly format.

Practical Text Mining with Perl is ideal as a textbook for undergraduate and graduate courses in text mining and as a reference for a variety of professionals who are interested in extracting information from text documents.

 

Contents

List of Figures
Acknowledgments
Text Patterns
Quantitative Text Summaries
Probability
Problems
6
Multivariate Techniques withText
Applications
Text Clustering
9
Overview of Perl for Text Mining
Summary of R used in this Book
Index
Copyright

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About the author (2011)

Roger Bilisoly, PhD, is an Assistant Professor of Statistics at Central Connecticut State University, where he developed and teaches a new graduate-level course in text mining for the school's data mining program.

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