Proceedings of the 14th Annual Conference on Genetic and Evolutionary Computation 2012
DOI: 10.1145/2330163.2330335
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A hyper-heuristic evolutionary algorithm for automatically designing decision-tree algorithms

Abstract: Decision tree induction is one of the most employed methods to extract knowledge from data, since the representation of knowledge is very intuitive and easily understandable by humans. The most successful strategy for inducing decision trees, the greedy top-down approach, has been continuously improved by researchers over the years.This work, following recent breakthroughs in the automatic design of machine learning algorithms, proposes a hyper-heuristic evolutionary algorithm for automatically generating deci… Show more

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Cited by 33 publications
(37 citation statements)
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“…In the case of evolutionary artificial neural networks, researchers have gone one step further, and are using evolutionary algorithms to create ensembles of these networks [28], which is categorized as a combination method in meta-learning. After neural networks, approaches for building rule induction algorithms [87] and decision trees [9] were also proposed. These approaches resemble work in metaevolutionary algorithms, and in this case the outer loop algorithm is an evolutionary approach and the inner loop is essentially a learning algorithm, which can be, again, an evolutionary one.…”
Section: Meta-learningmentioning
confidence: 99%
See 3 more Smart Citations
“…In the case of evolutionary artificial neural networks, researchers have gone one step further, and are using evolutionary algorithms to create ensembles of these networks [28], which is categorized as a combination method in meta-learning. After neural networks, approaches for building rule induction algorithms [87] and decision trees [9] were also proposed. These approaches resemble work in metaevolutionary algorithms, and in this case the outer loop algorithm is an evolutionary approach and the inner loop is essentially a learning algorithm, which can be, again, an evolutionary one.…”
Section: Meta-learningmentioning
confidence: 99%
“…A few years after this first work, [9] proposed to generate a complete algorithm to create a decision tree induction algorithm from sub-components of well-known algorithms. This was achieved using a genetic algorithm with a linear individual representation where each gene value represents a specific choice in the design of one component of a decision tree algorithm.…”
Section: Selecting/generating Algorithm Components For Classificationmentioning
confidence: 99%
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“…HEAD-DT, which is subject of this paper, is capable of performing quite well when generating a novel decision-tree induction algorithm for a particular problem (data set) [2], and also for a group of data sets [4][5][6]. Nevertheless, HEAD-DT was employed optimizing always the same objective function (F-Measure), and, moreover, no consistent investigation was performed regarding the ability of HEAD-DT for dealing with data sets that share a particular structural characteristic.…”
Section: Introductionmentioning
confidence: 99%