iRead4Skills Dataset 1: corpora by complexity level for FR, PT and SP

  1. Pintard, Alice 12
  2. François, Thomas 12
  3. Nagant de Deuxchaisnes, Justine 12
  4. Barbosa, Sílvia 34
  5. Reis, Maria Leonor 34
  6. Moutinho, Michell 34
  7. Monteiro, Ricardo 34
  8. Amaro, Raquel 34
  9. Correia, Susana 34
  10. Rodríguez Rey, Sandra 56
  11. Garcia González, Marcos 56
  12. Mu, Keran 7
  13. Blanco Escoda, Xavier 7
  1. 1 CENTAL
  2. 2 Université Catholique de Louvain
    info

    Université Catholique de Louvain

    Louvain-la-Neuve, Bélgica

    ROR https://ror.org/02495e989

  3. 3 CLUNL
  4. 4 Universidade Nova de Lisboa
    info

    Universidade Nova de Lisboa

    Lisboa, Portugal

    ROR https://ror.org/02xankh89

  5. 5 CITIUS
  6. 6 Universidade de Santiago de Compostela
    info

    Universidade de Santiago de Compostela

    Santiago de Compostela, España

    ROR https://ror.org/030eybx10

  7. 7 Universitat Autònoma de Barcelona
    info

    Universitat Autònoma de Barcelona

    Barcelona, España

    ROR https://ror.org/052g8jq94

Editor: Zenodo

Ano de publicación: 2024

Tipo: Dataset

Resumo

The iRead4Skills Dataset 1: corpora by level of complexity for FR, PT and SP is a collection of written texts of several genres and levels of complexity, in txt format, compiled under the scope of the project iReadSkills – Intelligent Reading Improvement System for Fundamental and Transversal Skills Development. The project, funded by the European Commission (grant number: 1010094837) aims to improve reading skills in the adult population by creating an intelligent system that assesses text complexity and suggests appropriate reading materials to adults with low literacy skills, contributing to reducing skills gaps and to provide access to information and culture (https://iread4skills.com/).   The compilation of this first dataset was based on the complexity levels established as relevant for the project (Very Easy (approx. A1), Easy (approx. A2) and Plain (approx. B1) and on the expected needs of learners and trainers. For some genres, there are also texts of a more complex level. The data will provide the basis for the training and test sets for the complexity analysis systems for the three languages of the project: French, Portuguese, and Spanish. The dataset will be further enhanced, validated, and annotated by end-users, originating forthcoming versions and a second, derived, dataset. The resource is composed of three sub corpora: French, Portuguese and Spanish.   Each of the sub corpora considers different complexity levels and covers texts from the following communication domains: 01_personal communication 02_institutional/professional communication 03_social media 04_commercial communication/dissemination 05_non-fiction book 06_fiction book 07_didactic book 08_academic/school 09_political communication/dissemination 10_legal documentation 11_religious texts/dissemination   French corpus:   Number of texts: 2 199 Number of tokens: 530 298   Spanish corpus: Number of texts: 2 563 Number of tokens:  960 644   Portuguese corpus: Number of texts: 2 915 Number of tokens: 802 125