The paper considers the use of elements of Formal Concept Analysis – multidimensional or polyadic formal contexts – to extract information from natural language texts. We propose the method for constructing polyadic formal contexts by means of Semantic Role Labeling and Abstract Meaning Representation (AMR) of texts. Using semantic role labeling, a conceptual graph is created for each sentence of the text, and a specific scheme of abstract meaning representation of the sentence is developed based on its elements. The polyadic formal context is a multidimensional tensor, whose points are elements of an AMR scheme. To extract information from a polyadic formal context, data associations as sub-contexts of the original context are built. Each such subcontext is associated with a specific element of the AMR scheme. Queries to associations return responses that preserve the meaning of the phrases according to the AMR scheme. The method was tested in the task of finding dependencies between texts on the corpus of abstracts of scientific articles on biomedical subjects of the PubMed system.

Язык оригиналаанглийский
Страницы (с-по)140-154
Число страниц15
ЖурналCEUR Workshop Proceedings
Том2813
СостояниеОпубликовано - 2021
СобытиеXXIII Объединенная научная конференция «Интернет и современное общество»
- Университет ИТМО, Санкт-Петербург, Российская Федерация
Продолжительность: 17 июн 202020 июн 2020
Номер конференции: 23
http://ims.ifmo.ru/ru/pages/2/programma.htm

    Предметные области Scopus

  • Компьютерные науки (все)

ID: 85926981