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SweDN 1.0

https://doi.org/10.23695/36V9-9017
I. IDENTIFYING INFORMATION Title* SWE-DN Subtitle A Swedish text summarization corpus Created by* Julius Monsen (julius.monsen@liu.seOpens in a new tab), Arne Jönsson (arne.jonsson@liu.seOpens in a new tab) Publisher(s)* Linköping University Link(s) / permanent identifier(s)* https://spraakbanken.gu.se/resurser/superlimOpens in a new tab Abstract* The SWE-DN corpus is based on 1,963,576 news articles from the Swedish newspaper Dagens Nyheter (DN) during the years 2000--2020. The articles are filtered to resemble the CNN/DailyMail dataset both regarding textual structure Funded by* SweClarin Cite as [1] A method for building non-English corpora for abstractive text summarization, Julius Monsen, Arne Jönsson, Proceedings of the CLARIN Annual Conference, 2021 Related datasets Similar to CNN/DailyMail; part of SuperLim 2.0 collection II. USAGE Key applications Training text summarizers, both extractive and abstractive. Intended task(s)/usage(s) Given a text (article), provide its summary. Recommended evaluation measures Harmonic mean of Bleu and Rouge; Rouge, BERTScore, Coh-Metrix Dataset function(s) Model development Recommended split(s) "The articles in the dataset fall into five categories: domestic news, economy, sports, culture, other. The training set consists of the first three categories (78% of the dataset), the test set contains the fourth category (12%), the test set the fifth category (10%). The purpose is to have a cross-domain split which helps evaluate the model's ability to generalize to new data. The "other" category was chosen for the test set as the most diverse one (and presumably the most difficult)." III. DATA Primary data* Text Language* Swedish Dataset in numbers* 38,121 news articles with corresponding preambles Nature of the content* News texts Format* JSONL and TSV files with id, headline, summary, article and article category. An additional file with various statistics for each entry (including length measures, embedding similarity and article category) can be accessed at Språkbanken's website. The entries can be matched using the ids. Data source(s)* Dagens Nyheter news texts from 2000--2020 Data collection method(s)* Received 1,936,576 news articles from Dagens Nyheter Data selection and filtering* Filtered to resemble the CNN/DailyMail dataset, see [1] Data preprocessing* See [1] Data labeling* None Annotator characteristics IV. ETHICS AND CAVEATS Ethical considerations Things to watch out for V. ABOUT DOCUMENTATION Data last updated* 20221217, Julius Monsen Which changes have been made, compared to the previous version* First data release Access to previous versions This document created* 20221206, Arne Jönsson This document last updated* 20230203, Aleksandrs Berdicevskis Where to look for further details Documentation template version* v1.1 VI. OTHER Related projects References [1] A method for building non-English corpora for abstractive text summarization, Julius Monsen, Arne Jönsson, Proceedings of the CLARIN Annual Conference, 2021
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https://doi.org/10.23695/36V9-9017

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