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Boosting Descriptive ILP for Predictive Learning in Bioinformatics

机译:促进描述性ILP促进生物信息学中的预测性学习

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摘要

Boosting is an established propositional learning method to promote the predictive accuracy of weak learning algorithms, and has achieved much empirical success. However, there have been relatively few efforts to apply boosting to Inductive Logic Programming (ILP) approaches. We investigate the use of boosting descriptive ILP systems, by proposing a novel algorithm for generating classification rules which searches using a hybrid language bias/production rule approach, and a new method for converting first-order classification rules to binary classifiers, which increases the predictive accuracy of the boosted classifiers. We demonstrate that our boosted approach is competitive with normal ILP systems in experiments with bioinformatics datasets.
机译:Boosting是一种建立的命题学习方法,可以提高弱学习算法的预测准确性,并取得了许多经验上的成功。但是,将提升应用于归纳逻辑编程(ILP)方法的工作很少。我们通过提出一种用于生成使用混合语言偏向/产生规则方法进行搜索的分类规则的新颖算法以及一种用于将一阶分类规则转换为二进制分类器的新方法的方法,来研究增强描述性ILP系统的使用,该方法将增加预测性分类器的准确性。我们证明,在生物信息学数据集的实验中,我们的增强方法与普通的ILP系统具有竞争性。

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