Last updated: 2020-02-17

Checks: 2 0

Knit directory: text_classification/

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File Version Author Date Message
Rmd 9322366 Sefa Ozalp 2020-02-17 add topic detection using textmineR
html ab3a4e3 Sefa Ozalp 2020-02-16 Build site.
html f9d4362 Sefa Ozalp 2020-02-16 Build site.
Rmd 02eaf17 Sefa Ozalp 2020-02-16 fix typo
html bb59d89 Sefa Ozalp 2020-02-16 Build site.
Rmd 1390d5a Sefa Ozalp 2020-02-16 add tidy TC
Rmd 32b1e82 Sefa Ozalp 2020-02-16 Start workflowr project.

  1. Check this for text classification using tidy data principles. Expect a lot of pipes.

  2. Check this for topic detection and a naive topic labelling tool based on probable bigrams. The results are very interesting.