Kazan (Volga region) Federal University, KFU
KAZAN
FEDERAL UNIVERSITY
 
ALGORITHMS FOR LINGUISTIC DES­CRIPTION OF CATEGORICAL DATA
Form of presentationArticles in international journals and collections
Year of publication2022
Языканглийский
  • Zuev Denis Sergeevich, author
  • Rodriges Rodriges Karlos Rafael , postgraduate kfu
  • Bibliographic description in the original language Rodríguez Rodríguez, C.R., Zuev, D.S., Peña Abreu, M. (2022). Algorithms for Linguistic Description of Categorical Data. In: Piñero Pérez, P.Y., Bello Pérez, R.E., Kacprzyk, J. (eds) Artificial Intelligence in Project Management and Making Decisions. UCIENCIA 2021. Studies in Computational Intelligence, vol 1035. Springer, Cham. https://doi.org/10.1007/978-3-030-97269-1_5
    Annotation The paper proposes a method that comprises five algorithms for producing composite linguistic summaries from categorical data. The generated composite summaries reflect Evidence, Contrast, or Emphasis relations between at least two constituent summaries. The constituent summaries are instances of the LDS classical protoforms created, in this case, with frequent L1 item sets and association rules obtained from applying an association rule mining algorithm. In order to verify the feasibility of implementing the method, we performed a use case with a dataset of 2128 cases of the Economic Chamber of the Provincial People?s Court of Havana. The results were consistent with expectations, obtaining 18 Evidence relations, 11 Contrast relations, and 16 Emphasis relations. Furthermore, we evaluated the interpretability of the composite summaries obtained in the use case. Specifically, we measured the accuracy of identifying the relation type implicit in the summary and their understandability.
    Keywords Association rules, Linguistic data summarization, Linguistic descriptions of data
    The name of the journal Studies in Computational Intelligence
    URL https://link.springer.com/chapter/10.1007/978-3-030-97269-1_5
    Please use this ID to quote from or refer to the card https://repository.kpfu.ru/eng/?p_id=266732&p_lang=2

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