Goto

Collaborating Authors

 metro map


A comprehensive review of visualization methods for association rule mining: Taxonomy, Challenges, Open problems and Future ideas

Fister, Iztok Jr., Fister, Iztok, Fister, Dušan, Podgorelec, Vili, Salcedo-Sanz, Sancho

arXiv.org Artificial Intelligence

Association rule mining is intended for searching for the relationships between attributes in transaction databases. The whole process of rule discovery is very complex, and involves pre-processing techniques, a rule mining step, and post-processing, in which visualization is carried out. Visualization of discovered association rules is an essential step within the whole association rule mining pipeline, to enhance the understanding of users on the results of rule mining. Several association rule mining and visualization methods have been developed during the past decades. This review paper aims to create a literature review, identify the main techniques published in peer-reviewed literature, examine each method's main features, and present the main applications in the field. Defining the future steps of this research area is another goal of this review paper.


Discovering associations in COVID-19 related research papers

Fister, Iztok Jr., Fister, Karin, Fister, Iztok

arXiv.org Artificial Intelligence

A COVID-19 pandemic has already proven itself to be a global challenge. It proves how vulnerable humanity can be. It has also mobilized researchers from different sciences and different countries in the search for a way to fight this potentially fatal disease. In line with this, our study analyses the abstracts of papers related to COVID-19 and coronavirus-related-research using association rule text mining in order to find the most interestingness words, on the one hand, and relationships between them on the other. Then, a method, called information cartography, was applied for extracting structured knowledge from a huge amount of association rules. On the basis of these methods, the purpose of our study was to show how researchers have responded in similar epidemic/pandemic situations throughout history.