학술논문

Mining Heterogeneous Associations from Pediatric Cancer Data by Relational Concept Analysis
Document Type
Conference
Source
2020 International Conference on Data Mining Workshops (ICDMW) ICDMW Data Mining Workshops (ICDMW), 2020 International Conference on. :597-604 Nov, 2020
Subject
Computing and Processing
Shape
Tools
Feature extraction
Oncology
Biology
Data mining
Cancer
Association rules
feature hierarchies
relational data mining
oncology
TRECS
concept analysis
Language
ISSN
2375-9259
Abstract
To gain an in-depth understanding of human diseases, biologists typically mine patient data for relevant patterns. Clinical datasets are often unlabeled and involve features, a.k.a. markers, split into classes w.r.t. biological functions, whereby target patterns might well mix both levels. As such heterogeneous patterns are beyond the reach of current analytical tools, dedicated miners, e.g. for association rules, need to be devised. Contemporary multi-relational (MR) association miners, while capable of mixing object types, are rather limited in rule shape (atomic conclusions) while ignoring feature composition. Our own approach builds upon a MR-extension of concept analysis further enhanced with flexible propositionnalisation operators and dedicated MR modeling of patient data. The resulting MR association miner was validated on a pediatric oncology dataset.