Publication | Closed Access
Automatic Design of Decision-Tree Algorithms with Evolutionary Algorithms
39
Citations
50
References
2013
Year
Artificial IntelligenceAutomatic DesignDecision-tree Induction AlgorithmsEngineeringMachine LearningEvolutionary AlgorithmsOptimization-based Data MiningData ScienceData MiningPattern RecognitionDecision TreeDecision Tree LearningBiostatisticsHyper-heuristic Evolutionary AlgorithmCombinatorial OptimizationEmpirical AnalysisKnowledge DiscoveryComputer ScienceBioinformaticsEvolutionary ProgrammingEvolutionary Data MiningComputational BiologyClassificationLearning Classifier System
This study reports the empirical analysis of a hyper-heuristic evolutionary algorithm that is capable of automatically designing top-down decision-tree induction algorithms. Top-down decision-tree algorithms are of great importance, considering their ability to provide an intuitive and accurate knowledge representation for classification problems. The automatic design of these algorithms seems timely, given the large literature accumulated over more than 40 years of research in the manual design of decision-tree induction algorithms. The proposed hyper-heuristic evolutionary algorithm, HEAD-DT, is extensively tested using 20 public UCI datasets and 10 microarray gene expression datasets. The algorithms automatically designed by HEAD-DT are compared with traditional decision-tree induction algorithms, such as C4.5 and CART. Experimental results show that HEAD-DT is capable of generating algorithms which are significantly more accurate than C4.5 and CART.
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