Détection et Explication des Données Régulières et Irrégulières
Fuzzy partitions associated with linguistic variables are particularly useful to provide users with a description of the data. However, designing fuzzy partitions that make it possible to linguistically describe the data distribution and its inner structure is a tedious task. This paper introduces a novel strategy to infer possible fuzzy partitions from the data distribution with the objective to have available modalities to describe both dense and sparse regions. A data inner structure as well as the anomalies are then identified using these partitions whose terms are also used to provide users with contrastive explanations about the found anomalies.