Year
2022
Authors
AKOKA Jacky, WATTIAU Isabelle, MAMMAR KOUADRI Wissam, DU MOUZA Cédric
Abstract
Historians analyze information from diverse and heterogeneous sources to verify hypotheses and/or to propose new ones. Central to any historical project is the concept of uncertainty, reflecting a lack of confidence. This may limit the scope of the hypotheses formulated. Uncertainty encompasses a variety of aspects including ambiguity, incompleteness, vagueness, randomness, and inconsistency. These aspects cannot be easily detected automatically in plain-text documents. The objective of this article is to propose a process for detecting uncertainty, combining dictionary-based approaches, and pattern identification. The process is validated through experiments conducted on a real historical data set.
MAMMAR KOUADRI, W., AKOKA, J., WATTIAU, I. et DU MOUZA, C. (2022). Uncertainty Detection in Historical Databases. Dans: Natural Language Processing and Information Systems: 27th International Conference on Applications of Natural Language to Information Systems, NLDB 2022, Valencia, Spain, June 15–17, 2022, Proceedings. Springer, pp. 73-85.