We introduce a novel domain-driven rule discovery and evaluation algorithm based on Swanson's logical relation approach. Over more than a decade, rules have been mined from large biomedical datasets and been evaluated solely based on statistical properties of the rules or user-belief specifications. This approach faces tremendous challenges to determine novel, actionable and interesting rules. In this paper, we introduce a new paradigm in addressing rule interestingness problem using domain knowledge. We demonstrate that novel and interesting association rules can be discovered from large medical datasets based on its ability to infer previously unknown relations in biomedical domain. Our data mining algorithm shows that we can effectively ...
The constantly increasing volume and complexity of available biological data requires new methods fo...
Paper accepted for publication in Journal of Information Systems. Retrieved 6/26/2006 from http://ww...
The paper presents an interactive discovery support system for the field of medicine. The intended u...
Semantic interestingness measures for discovering association rules in the skeletal dysplasia domain...
Introduction: An important quality of association rules is novelty. However, evaluating rule novelty...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
International audienceMedical association rules induction is used to discover useful correlations be...
AbstractMedical association rules induction is used to discover useful correlations between pertinen...
Background: Lately, ontologies have become a fundamental building block in the process of formalisin...
International audienceThe present work aims at discovering new associations between medical concepts...
The explosion of biomedical data and the growing number of disparate data sources are exposing resea...
The explosion of biomedical data and the growing number of disparate data sources are exposing resea...
Finding relationships among drug reaction/disease and involved genes requires laborious examination ...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
Data mining is used to discover hidden patterns or structures in large databases. Association rule i...
The constantly increasing volume and complexity of available biological data requires new methods fo...
Paper accepted for publication in Journal of Information Systems. Retrieved 6/26/2006 from http://ww...
The paper presents an interactive discovery support system for the field of medicine. The intended u...
Semantic interestingness measures for discovering association rules in the skeletal dysplasia domain...
Introduction: An important quality of association rules is novelty. However, evaluating rule novelty...
International audienceAmong the most powerful tools for knowledge representation, we cite the ontolo...
International audienceMedical association rules induction is used to discover useful correlations be...
AbstractMedical association rules induction is used to discover useful correlations between pertinen...
Background: Lately, ontologies have become a fundamental building block in the process of formalisin...
International audienceThe present work aims at discovering new associations between medical concepts...
The explosion of biomedical data and the growing number of disparate data sources are exposing resea...
The explosion of biomedical data and the growing number of disparate data sources are exposing resea...
Finding relationships among drug reaction/disease and involved genes requires laborious examination ...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
Data mining is used to discover hidden patterns or structures in large databases. Association rule i...
The constantly increasing volume and complexity of available biological data requires new methods fo...
Paper accepted for publication in Journal of Information Systems. Retrieved 6/26/2006 from http://ww...
The paper presents an interactive discovery support system for the field of medicine. The intended u...