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This is an R-package to import exported WhatsApp chatlogs, parse them into a usable dataframe format and thereby enable further analysis. This parser was built with the goal to work with chat logs extracted on Android as well as iOS devices, run on Linux, Mac and Windows, and to be able to handle multiple languages. Currently, only English and German are supported, but in principle, other languages could be added relatively easily (see below). The repo also contains a function to scrape and update the emoji_dictionary, should new emoji be added to WhatsApp in the meantime.
RTools
needs to be installed and workingRJava
package needs to be installed and workingragg
package and you need to set your graphics backend to AGG
(In Rstudio: Tools > Global Options > Graphics > Backend) # for the most up-to-date GitHub version
library(devtools)
devtools::install_github("gesiscss/WhatsR")
# from CRAN
install.packages("WhatsR")
# creating simulated chatlog (saved in working directory)
simulated_raw_chat <- create_chatlog(language = "english")
# parsing it
simulated_parsed_chat <- parse_chat("Simulated_WhatsR_chatlog.txt")
# plotting emojis contained in chat
plot_emoji(simulated_parsed_chat, plot="bar")
For Android Phones: https://faq.whatsapp.com/en/android/23756533/?category=5245251
For Iphones: https://faq.whatsapp.com/en/iphone/20888066/?category=5245251#email
# parsing it
simulated_parse_chat <- parse_chat("PATH/TO/YOUR/EXPORTED/FILE.txt")
# plotting it
plot_emoji(simulated_parse_chat, plot="bar")
If you are using this package for your research, please cite it accordingly. You get the citation as a BibTex by running
To cite package ‘WhatsR’ in publications use:
Kohne J (2023). “WhatsR - An R-package for parsing, anonymizing and visualizing exported
WhatsApp chat logs.” doi:10.5281/zenodo.7875622, <https://doi.org/10.5281/zenodo.7875622>.
A BibTeX entry for LaTeX users is
@Misc{,
title = {WhatsR - An R-package for parsing, anonymizing and visualizing exported WhatsApp chat logs},
doi = {10.5281/zenodo.7875622},
url = {https://doi.org/10.5281/zenodo.7875622},
year = {2023},
author = {J. Kohne},
}
Currently, only chats exported from phones set to German or English are supported. Other languages can be added by appending the languages.csv
file with the necessary regular expressions to differentiate system messages from user generated content. In addition, parse_chat
would need to be adapted and additional tests would have to be added. If you would like to add a language, please consider doing so via a pull request in this repository.
The package also includes some functions to compute additional metrics and visualize them. We will provide some basic examples for chats with two participants and for group chats with multiple participants here, for a complete overview, you can check the documentation or the figure section. The used chat is a chat that was parsed with the anonimize = TRUE
parameter to exclude participant names. All plotting functions include multiple types of plots and additional parameters to restrict the range of the data.
summarize_tokens_per_person(data)
$`WhatsApp System Message`
$`WhatsApp System Message`$Timespan
$`WhatsApp System Message`$Timespan$Start
[1] "2020-10-27 18:51:00 UTC"
$`WhatsApp System Message`$Timespan$End
[1] "2022-10-06 19:57:00 UTC"
$`WhatsApp System Message`$TokenStats
Min. 1st Qu. Median Mean 3rd Qu. Max.
1 1 1 1 1 1
$Person_1
$Person_1$Timespan
$Person_1$Timespan$Start
[1] "2020-10-27 18:51:00 UTC"
$Person_1$Timespan$End
[1] "2022-10-06 19:57:00 UTC"
$Person_1$TokenStats
Min. 1st Qu. Median Mean 3rd Qu. Max.
1.000 1.000 6.000 9.195 13.000 169.000
$Person_2
$Person_2$Timespan
$Person_2$Timespan$Start
[1] "2020-10-27 18:51:00 UTC"
$Person_2$Timespan$End
[1] "2022-10-06 19:57:00 UTC"
$Person_2$TokenStats
Min. 1st Qu. Median Mean 3rd Qu. Max.
1.00 1.00 6.00 10.75 14.00 407.00
Distribution of sent Messages.
plot_messages(data, plot = "cumsum", exclude_sm = TRUE)
Distribution of sent Tokens (words).
plot_tokens(data, plot = "violin", exclude_sm = TRUE)
Distribution of sent Tokens per Person over time
plot_tokens_over_time(data, plot = "hours", exclude_sm = TRUE)
Wordcloud of sent tokens, seperately for each participant.
plot_wordcloud(data, comparison = TRUE, exclude_sm = TRUE, font_size=50, min_occur= 300)
Occurrences of keywords in the chat. Example keyword is “Weihnachten” (Christmas).
plot_lexical_dispersion(data,keywords = c("weihnachten"), exclude_sm = TRUE)
Amount of sent Links per person and over time
plot_links(data, plot = "heatmap", exclude_sm = TRUE)
Amount of sent Smilies over time
plot_smilies(data, plot = "cumsum", exclude_sm = TRUE)
Amount of sent emoji per person
plot_emoji(data, plot = "splitbar", min_occur = 50, exclude_sm = TRUE)
Plotting mentioned locations by persons
Currently disabled until changes in ggmap make it to CRAN
Plotting time it takes to respond
plot_replytimes(data, type = "replytime", exclude_sm = TRUE)
Amount of sent Media files per person and over time
plot_media(data, plot = "bar", exclude_sm = TRUE)
Interactive network of chat participants. A connection represents a response to a message. Each Message is interpreted as a response to the previous message. Consecutive messages by the same chat participant are summarized into one “session”. The shown plot is simple image, the actual output is an interactive HTML object, see man folder.
plot_network(data)