21.42 Further Reading and Acknowledgements
Other resources include:
- The Journal of Statistical Software article, is a good start http://www.jstatsoft.org/v25/i05/paper
- Bilisoly (2008) presents methods and algorithms for text mining using Perl.
Thanks also to Tony Nolan for suggestions of some of the examples used in this chapter.
Some of the examples were motivated by http://trinkerrstuff.wordpress.com/2014/10/31/exploration-of-letter-make-up-of-english-words/.
Bilisoly, Roger. 2008. Practical Text Mining with Perl. Wiley Series on Methods and Applications in Data Mining. Wiley. http://books.google.com.au/books?id=YkMFVbsrdzkC.
Your donation will support ongoing availability and give you access to the PDF version of this book. Desktop Survival Guides include Data Science, GNU/Linux, and MLHub. Books available on Amazon include Data Mining with Rattle and Essentials of Data Science. Popular open source software includes rattle, wajig, and mlhub. Hosted by Togaware, a pioneer of free and open source software since 1984. Copyright © 1995-2022 Graham.Williams@togaware.com Creative Commons Attribution-ShareAlike 4.0