Automatic Text Simplification of News Articles in the Context of Public Broadcasting

Maupomé, Diego, Rancourt, Fanny, Soulas, Thomas, Lachance, Alexandre, Meurs, Marie-Jean, Aleksandrova, Desislava, Dufour, Olivier Brochu, Pontes, Igor, Cardon, Rémi, Simard, Michel, Vajjala, Sowmya

arXiv.org Artificial Intelligence 

This report summarizes the work carried out by the authors during the Twelfth Montreal Industrial Problem Solving Workshop, held at Université de Montréal in August 2022. The team tackled a problem submitted by CBC/Radio-Canada on the theme of Automatic Text Simplification (ATS). In order to make its written content more widely accessible, and to support its second-language teaching activities, CBC/RC has recently been exploring the potential of automatic methods to simplify texts. They have developed a modular lexical simplification system (LSS), which identifies complex words in French and English texts, and replaces them with simpler, more common equivalents. Recently however, the ATS research community has proposed a number of approaches that rely on deep learning methods to perform more elaborate transformations, not limited to just lexical substitutions, but covering syntactic restructuring and conceptual simplifications as well.

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