Threshold-free Pattern Mining Meets Multi-Objective Optimization: Application to Association Rules
Author:
Vernerey Charles1,
Loudni Samir1,
Aribi Noureddine2,
Lebbah Yahia2
Affiliation:
1. TASC (LS2N-CNRS), IMT Atlantique
2. Université Oran1, Lab. LITIO
Abstract
Constraint-based pattern mining is at the core of numerous data mining tasks. Unfortunately, thresholds which are involved in these constraints cannot be easily chosen. This paper investigates a Multi-objective Optimization approach where several (often conflicting) functions need to be optimized at the same time. We introduce a new model for efficiently mining Pareto optimal patterns with constraint programming. Our model exploits condensed pattern representations to reduce the mining effort. To this end, we design a new global constraint for ensuring the closeness of patterns over a set of measures. We show how our approach can be applied to derive high-quality non redundant association rules without the use of thresholds whose added-value is studied on both UCI datasets and case study related to the analysis of genes expression data integrating multiple external genes annotations.
Publisher
International Joint Conferences on Artificial Intelligence Organization
Cited by
1 articles.
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