A4 Refereed article in a conference publication
Creating a parallel Finnish—Easy Finnish dataset from news articles
Authors: Dmitrieva Anna, Konovalova Aleksandra
Editors: Miquel Espl`a-Gomis (Universitat d’Alacant, Spain), Mikel L. Forcada (Universitat d’Alacant,
Spain), Taja Kuzman (Joˇzef Stefan Institute, Slovenia), Nikola Ljubeˇsi´c (University of Ljubljana, Slovenia), Rik van Noord (University of Groningen, The Netherlands), Gema Ram´ırez-S´anchez (Prompsit Language Engineering, Spain), J¨org Tiedemann (University of Helsinki, Finland), Antonio Toral (University of Groningen, The Netherlands)
Conference name: Workshop on Open Community-Driven Machine Translation
Publication year: 2023
Book title : Proceedings of the 1st Workshop on Open Community-Driven Machine Translation
ISBN: 978-84-1302-228-4
Web address : https://macocu.eu/static/media/proceedings.37b7e88ce3dbab99adf9.pdf#page=27
Self-archived copy’s web address: https://research.utu.fi/converis/portal/detail/Publication/180195017
Modern natural language processing tasks such as text simplification or summarization are typically formulated as monolingual machine translation tasks. This requires appropriate datasets to train, tune, and evaluate the models. This paper describes the creation of a parallel Finnish–Easy Finnish dataset from the Yle News archives. The dataset contains 1919 manually verified pairs of articles, each containing an article in Easy Finnish (selkosuomi) and a corresponding article from Standard Finnish news. Standard Finnish texts total 687555 words, and Easy Finnish texts have 106733 words. This new aligned resource was created automatically based on the Yle News archives from the Language Bank of Finland (Kielipankki) and manually checked by a human expert. The dataset is available for download from Kielipankki. This resource will allow for more effective Easy Language research and for creating applications for automatic simplification and/or summarization of Finnish texts.
Downloadable publication This is an electronic reprint of the original article. |