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quanteda is an R package providing a comprehensive workflow and toolkit for natural language processing tasks such as corpus management, tokenization, analysis, and visualization. It has extensive functions for applying dictionary analysis, exploring texts using keywords-in-context, computing document and feature similarities, and discovering multi-word expressions through collocation scoring. Based entirely on sparse operations, it provides highly efficient methods for compiling document-feature matrices and for manipulating these or using them in further quantitative analysis. Using C++ and multithreading extensively, quanteda is also considerably faster and more efficient than other R and Python packages in processing large textual data.
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Kenneth Benoit
Kohei Watanabe
H. P. Wang
The Journal of Open Source Software
University of Cambridge
Trinity College Dublin
London School of Economics and Political Science
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Benoit et al. (Sat,) studied this question.
www.synapsesocial.com/papers/69d77833086f9d6299f31204 — DOI: https://doi.org/10.21105/joss.00774