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Using Ontologies to Express Prior Knowledge for Genetic Programming

机译:使用本体论表达遗传编程的先验知识

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摘要

Ontologies are useful for modeling domains and can be used to capture expert knowledge about a system. Genetic programming can be used to identify statistical relationships or models from data. Combining expert knowledge as well as statistical rules identified solely from data is necessary in application domains where data is scarce and a large body of expert knowledge exists. We therefore study if the performance of genetic programming can be improved by incorporating prior knowledge from an ontology. In particular, we include prior knowledge as additional features for genetic programming. The approach is tested with six benchmark data sets where we compare the required computational effort that is necessary to find an acceptable model with and without additional features. The results show that additional features gathered from an ontology improve the performance of tree-based GP. The probability to find acceptable solutions with a fixed computational budget is increased. For noisy data sets we observed the same effect as for the data sets without noise.
机译:本体对于建模域有用,可用于捕获有关系统的专家知识。遗传编程可用于识别来自数据的统计关系或模型。在数据域中的应用领域中必须结合专家知识以及仅从数据识别的统计规则,其中存在稀缺,并且存在大量专家知识。因此,我们通过从本体论纳入先验知识来改善遗传编程的性能。特别是,我们将先验知识包括作为遗传编程的其他特征。该方法是用六个基准数据集进行测试,其中我们比较所需的计算工作,以找到可接受模型的所需的计算工作,而无需其他功能。结果表明,从本体论收集的附加功能提高了基于树的GP的性能。找到具有固定计算预算的可接受解决方案的概率增加。对于嘈杂的数据集,我们观察到与没有噪声的数据集相同的效果。

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