GeRedE is a 270 million token German CMC corpus containing approximately 380,000 submissions and 6,800,000 comments posted on Reddit between 2010 and 2018. Reddit is a popular online platform combining social news aggregation, discussion and micro-blogging. The CWB-indexed version of our final corpus is available to registered academic users via CQPweb
This repository contains the scripts we used to extract German submissions and comments from the vast amount of data Jason Baumgartner provides at https://files.pushshift.io/reddit. It also contains the IDs of all submissions and comments included in our corpus, so that those who wish to recreate our corpus are not required to run all processing steps by themselves.
- download raw data from https://files.pushshift.io/reddit
- it is recommended, though not necessary, to re-compress all files into gzip or bz2 format
- you need both comments and submissions (from the respective subdirectories)
- run
extract-german-comments.py
on the raw comments andextract-german-comment-ids.py
on the thus created*-de.ldjson.gz
- this will identify comments that are most likely German
- run
prop_german.R
on the directory containing the*-lang.tsv.gz
files created in the second step- for each month, this will compute the proportion of German comments in each subreddit containing at least one German comment
- run
subreddits.R
on the directory containing the*-german_subreddits_prop.csv
files created in the previous step- creates
stats.csv
: statistics for all subreddits and months - creates
stats_filtered.csv
: subreddit filter; retains only subreddits where the proportion of comments classified as German is above the dynamic threshold (see paper for details)
- creates
- run
threads-extract-ids.py
on*-de.ldjson.gz
- this will extract all threads IDs with at least one German comment
- run
threads-extract.py
on the thus created*-thread-ids.tsv.gz
and the raw comments- this will extract all comments of threads that contain at least one German comment
- run
threads-sort.py
on the thus created*-de-threads.ldjson.gz
, saving the output inthreads-all.ldjson.gz
- this will sort the comments into threads
- run
threads-language.py
onstats_filtered.csv.gz
,data/german-comment-ids.txt.gz
and the above createdthreads-all.ldjson.gz
, saving the results inthreads-filtered.ldjson.gz
and the scores inthreads-all-lang-scores.tsv.gz
- this will filter out German threads with our combined approach (see paper for details)
- run
threads-add-submissions.py
on the raw submissions and thethreads-all-lang-scores.tsv.gz
- this will filter out all submissions of German threads
- run
reddit_ldjson_to_xml.py
on the filtered threads and submissions (reddit_ldjson_to_xml.py -p tokenized/ *.ldjson.gz
)- this will extract metadata and text, and convert the Reddit-flavored Markdown to XML
- note that this step uses Reddit's own snudown Markdown parser and only works with Python2.
- tokenization and sentence splitting with SoMaJo (
somajo-tokenizer -x --split_sentences
) - tag everything with
SoMeWeTa (
somewe-tagger --tag german_web_social_media_2018-12-21.model -x
), then do some STTS_IBK-specific postprocessing (SoMeWeTa/utils/STTS_IBK_postprocessor -x
) - TODO annotate all German comments and submissions
- TODO run
build-vrt.py
NB: the output files of the following steps can be found in the
data/
sub-folder:
- step 2 (
german-comment-ids.txt.gz
) - step 4 (
stats_filtered.csv.gz
) - step 8 (
threads-all-lang-scores.tsv.gz
)
data/thread-lang-annotated.tsv.gz
contains a manually annotated stratified sample of threads
-
Blombach, Andreas, Natalie Dykes, Philipp Heinrich, Besim Kabashi, and Thomas Proisl. 2020. “A Corpus of German Reddit Exchanges (GeRedE).” In Proceedings of the 12th Conference on Language Resources and Evaluation (LREC 2020), 6310–6316. Marseille: European Language Resources Association. PDF.
@InProceedings{Blombach_et_al_LREC:2020, author = {Blombach, Andreas and Dykes, Natalie and Heinrich, Philipp and Kabashi, Besim and Proisl, Thomas}, title = {A Corpus of {G}erman {R}eddit Exchanges ({GeRedE})}, year = {2020}, booktitle = {Proceedings of the 12th Conference on Language Resources and Evaluation ({LREC} 2020)}, pages = {6310--6316}, publisher = {European Language Resources Association}, address = {Marseille}, url = {https://www.aclweb.org/anthology/2020.lrec-1.774}, }