On interestingness measures of formal concepts

SO Kuznetsov, T Makhalova - Information Sciences, 2018 - Elsevier
Formal concepts and closed itemsets proved to be of big importance for knowledge
discovery, both as a tool for concise representation of association rules and a tool for …

Formal concept analysis: from knowledge discovery to knowledge processing

S Ferré, M Huchard, M Kaytoue, SO Kuznetsov… - A Guided Tour of …, 2020 - Springer
In this chapter, we introduce Formal Concept Analysis (FCA) and some of its extensions.
FCA is a formalism based on lattice theory aimed at data analysis and knowledge …

Learning concept interestingness for identifying key structures from social networks

J Gao, F Hao, Z Pei, G Min - IEEE Transactions on Network …, 2021 - ieeexplore.ieee.org
Identifying key structures from social networks that aims to discover hidden patterns and
extract valuable information is an essential task in the network analysis realm. These …

A methodology for analysis of concept lattice reduction

SM Dias, NJ Vieira - Information Sciences, 2017 - Elsevier
Formal concept analysis (FCA) is a mathematical theory of data analysis with applications in
many areas. The problem of obtaining a concept lattice of an appropriate size was identified …

On the efficient stability computation for the selection of interesting formal concepts

A Mouakher, SB Yahia - Information Sciences, 2019 - Elsevier
The lattice theory under the framework of formal concept analysis has brought mathematical
thinking to knowledge representation and discovery. In this respect, this mathematical …

Discovering structural alerts for mutagenicity using stable emerging molecular patterns

JP Métivier, A Lepailleur, A Buzmakov… - Journal of chemical …, 2015 - ACS Publications
This study is dedicated to the introduction of a novel method that automatically extracts
potential structural alerts from a data set of molecules. These triggering structures can be …

Introducing the closure structure and the GDPM algorithm for mining and understanding a tabular dataset

T Makhalova, A Buzmakov, SO Kuznetsov… - International Journal of …, 2022 - Elsevier
Pattern mining is one of the most studied fields in data mining. Being mostly motivated by
practitioners, pattern mining algorithms are often based on heuristics and are lacking …

[PDF][PDF] Concept Interestingness Measures: a Comparative Study.

SO Kuznetsov, TP Makhalova - CLA, 2015 - ceur-ws.org
Concept lattices arising from noisy or high dimensional data have huge amount of formal
concepts, which complicates the analysis of concepts and dependencies in data. In this …

Fast generation of best interval patterns for nonmonotonic constraints

A Buzmakov, SO Kuznetsov, A Napoli - Joint European Conference on …, 2015 - Springer
In pattern mining, the main challenge is the exponential explosion of the set of patterns.
Typically, to solve this problem, a constraint for pattern selection is introduced. One of the …

A hybrid and exploratory approach to knowledge discovery in metabolomic data

D Grissa, B Comte, M Pétéra, E Pujos-Guillot… - Discrete Applied …, 2020 - Elsevier
In this paper, we propose a hybrid and exploratory knowledge discovery approach for
analyzing metabolomic complex data based on a combination of supervised classifiers …