In Data Mining, the usefulness of association rules is strongly limited by the huge amount of delivered rules. In this paper we propose a new approach to prune and filter discovered rules. Using Domain Ontologies, we strengthen the integration of user knowledge in the post-processing task. Furthermore, an interactive and iterative framework is designed to assist the user along the analyzing task. On the one hand, we represent user domain knowledge using a Domain Ontology over database. On the other hand, a novel technique is suggested to prune and to filter discovered rules. The proposed framework was applied successfully over the client database provided by Nantes Habitat1
Abstract—Many large organizations have multiple databases distributed over different branches. Numbe...
In this paper, we situate and motivate the need for a post-processing phase to the association rule ...
[[abstract]]The problem of mining association rules incorporated with domain knowledge (ontology) ha...
International audienceIn Data Mining, the usefulness of association rules is strongly limited by the...
Abstract- In Data Mining, the usefulness of association rules is strongly limited by the huge amount...
Knowledge discovery and databases (KDD) deals with the overall process of discovering useful knowled...
This thesis is concerned with the merging of two active research domains: Knowledge Discovery in Dat...
Data mining is used to discover hidden patterns or structures in large databases. Association rule i...
Data mining is used to discover hidden patterns or structures in large databases. Association rule i...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
Despite the efforts on the area of knowledge management, the building and maintenance of ontologies ...
Association is widely used to find relations among items in a given database. However, finding the i...
[[abstract]]The problem of mining association rules incorporated with domain knowledge (ontology) ha...
Abstract—Many large organizations have multiple databases distributed over different branches. Numbe...
In this paper, we situate and motivate the need for a post-processing phase to the association rule ...
[[abstract]]The problem of mining association rules incorporated with domain knowledge (ontology) ha...
International audienceIn Data Mining, the usefulness of association rules is strongly limited by the...
Abstract- In Data Mining, the usefulness of association rules is strongly limited by the huge amount...
Knowledge discovery and databases (KDD) deals with the overall process of discovering useful knowled...
This thesis is concerned with the merging of two active research domains: Knowledge Discovery in Dat...
Data mining is used to discover hidden patterns or structures in large databases. Association rule i...
Data mining is used to discover hidden patterns or structures in large databases. Association rule i...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
Despite the efforts on the area of knowledge management, the building and maintenance of ontologies ...
Association is widely used to find relations among items in a given database. However, finding the i...
[[abstract]]The problem of mining association rules incorporated with domain knowledge (ontology) ha...
Abstract—Many large organizations have multiple databases distributed over different branches. Numbe...
In this paper, we situate and motivate the need for a post-processing phase to the association rule ...
[[abstract]]The problem of mining association rules incorporated with domain knowledge (ontology) ha...