Visitors   Views   Downloads

Wrangling categorical data in R

View preprint
Practical Data Science for Stats: Wrangling categorical data in R https://t.co/YZrRZaP2wl https://t.co/sJwpUF6WSG
RT @RosanaFerrero: Practical Data Science for Stats: Wrangling categorical data in R https://t.co/7COUAjpmwf #dataanalytics #datascience #b…
36 days ago
RT @RosanaFerrero: Practical Data Science for Stats: Wrangling categorical data in R https://t.co/7COUAjpmwf #dataanalytics #datascience #b…
RT @RosanaFerrero: Practical Data Science for Stats: Wrangling categorical data in R https://t.co/7COUAjpmwf #dataanalytics #datascience #b…
Practical Data Science for Stats: Wrangling categorical data in R https://t.co/7COUAjpmwf #dataanalytics #datascience #bigdata #AI
RT @askdrstats: My preprint has been published in @PeerJPreprints https://t.co/3G5n1rgAiw #ComputerEducation #DataScience #SocialComputing…
RT @askdrstats: My preprint has been published in @PeerJPreprints https://t.co/3G5n1rgAiw #ComputerEducation #DataScience #SocialComputing…
@hspter Wrangling categorical data in #Rstats https://t.co/idV4OIa8rx
RT @askdrstats: My preprint has been published in @PeerJPreprints https://t.co/3G5n1rgAiw #ComputerEducation #DataScience #SocialComputing…
My preprint has been published in @PeerJPreprints https://t.co/3G5n1rgAiw #ComputerEducation #DataScience #SocialComputing @thisisstats
NOT PEER-REVIEWED
"PeerJ Preprints" is a venue for early communication or feedback before peer review. Data may be preliminary.

Additional Information

Competing Interests

The authors declare that they have no competing interests.

Author Contributions

Amelia McNamara analyzed the data, contributed reagents/materials/analysis tools, wrote the paper, performed the computation work, reviewed drafts of the paper.

Nicholas J Horton analyzed the data, contributed reagents/materials/analysis tools, wrote the paper, performed the computation work, reviewed drafts of the paper.

Data Deposition

The following information was supplied regarding data availability:

The code is available online at https://github.com/dsscollection/factor-mgmt (currently a private repository, but will soon be made public).

Funding

The authors received no funding for this work.


Add your feedback

Before adding feedback, consider if it can be asked as a question instead, and if so then use the Question tab. Pointing out typos is fine, but authors are encouraged to accept only substantially helpful feedback.

Some Markdown syntax is allowed: _italic_ **bold** ^superscript^ ~subscript~ %%blockquote%% [link text](link URL)
 
By posting this you agree to PeerJ's commenting policies