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Python: Real-World Data Science
book

Python: Real-World Data Science

by Dusty Phillips, Fabrizio Romano, Phuong Vo.T.H, Martin Czygan, Robert Layton, Sebastian Raschka
June 2016
Beginner to intermediate content levelBeginner to intermediate
1255 pages
29h 1m
English
Packt Publishing
Content preview from Python: Real-World Data Science

Character n-grams

We saw how function words can be used as features to predict the author of a document. Another feature type is character n-grams. An n-gram is a sequence of n objects, where n is a value (for text, generally between 2 and 6). Word n-grams have been used in many studies, usually relating to the topic of the documents. However, character n-grams have proven to be of high quality for authorship attribution.

Character n-grams are found in text documents by representing the document as a sequence of characters. These n-grams are then extracted from this sequence and a model is trained. There are a number of different models for this, but a standard one is very similar to the bag-of-words model we have used earlier.

For each distinct ...

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Publisher Resources

ISBN: 9781786465160