Mining important conceptual patterns is an essential task for understanding the context and content of complex data in many scientific and engineering applications. While exact …
In this work we propose R-GPM, a parallel computing framework for graph pattern mining (GPM) through a user-defined subgraph relation. More specifically, we enable the …
A Mouakher, A Ko - International Journal of General Systems, 2022 - Taylor & Francis
Formal concept analysis (FCA) is a mathematical tool for analyzing data and formally representing conceptual knowledge. Under this formalism, the concept stability metric can …
A Mouakher, O Ktayfi, S Ben Yahia - International Journal of …, 2019 - Taylor & Francis
The effective use of the concept lattice in large datasets has been always limited by the large volume of extracted knowledge. The stability measure has been shown to be of valuable …
SO Kuznetsov, EG Parakal - … for Industry”(IITI'23): Volume 1, 2023 - books.google.com
Inherently explainable Machine Learning (ML) models are able to provide explanations for their predictions by virtue of their construction. The explanations of a ML model are more …
Abstract Inherently explainable Machine Learning (ML) models are able to provide explanations for their predictions by virtue of their construction. The explanations of a ML …
Discovering subgroups with significant association with binary class labels has wide applications in drug discovery, market basket analysis, etc. The state-of-the-art technique …
This paper proposes an approach and an associated system based on pattern structures, aimed at the classification of documents represented as graphs. The representation of …
Clustering aims at finding disjoint groups of similar objects in data and is one major task in Machine Learning. Yet, it is gaining more attention in Formal Concept Analysis community in …