Publication | Closed Access
Ranking and selecting clustering algorithms using a meta-learning approach
94
Citations
46
References
2008
Year
Unknown Venue
Meta-learning ApproachNovel FrameworkEngineeringInformation RetrievalMachine LearningData ScienceMeta-learningData MiningPattern RecognitionPredictive AnalyticsKnowledge DiscoveryCandidate AlgorithmsMachine Learning ToolBiostatisticsComputer ScienceMeta-learning (Computer Science)Unsupervised Machine LearningOptimization-based Data Mining
We present a novel framework that applies a meta-learning approach to clustering algorithms. Given a dataset, our meta-learning approach provides a ranking for the candidate algorithms that could be used with that dataset. This ranking could, among other things, support non-expert users in the algorithm selection task. In order to evaluate the framework proposed, we implement a prototype that employs regression support vector machines as the meta-learner. Our case study is developed in the context of cancer gene expression micro-array datasets.
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