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EAGLE: Efficient Active Learning of Link Specifications Using Genetic Programming

机译:EAGLE:使用遗传编程进行链接规范的有效主动学习

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摘要

With the growth of the Linked Data Web, time-efficient approaches for computing links between data sources have become indispensable. Most Link Discovery frameworks implement approaches that require two main computational steps. First, a link specification has to be explicated by the user. Then, this specification must be executed. While several approaches for the time-efficient execution of link specifications have been developed over the last few years, the discovery of accurate link specifications remains a tedious problem. In this paper, we present EAGLE, an active learning approach based on genetic programming. EAGLE generates highly accurate link specifications while reducing the annotation burden for the user. We evaluate EAGLE against batch learning on three different data sets and show that our algorithm can detect specifications with an F-measure superior to 90% while requiring a small number of questions.
机译:随着链接数据Web的增长,用于计算数据源之间链接的省时方法已变得不可或缺。大多数链接发现框架实现的方法需要两个主要的计算步骤。首先,用户必须说明链接规范。然后,必须执行此规范。尽管在过去的几年中已经开发出了一些用于节省时间的执行链接规范的方法,但是准确链接规范的发现仍然是一个繁琐的问题。在本文中,我们介绍了EAGLE,这是一种基于基因编程的主动学习方法。 EAGLE生成高度准确的链接规范,同时为用户减少注释负担。我们针对三个不同数据集上的批处理学习对EAGLE进行了评估,结果表明,我们的算法可以在F-度量高于90%的情况下检测规格,同时需要少量问题。

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