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An Efficient Approach for the Generation of Allen Relations

机译:一种有效的艾伦关系的方法

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Event data is increasingly being represented according to the Linked Data principles. The need for large-scale machine learning on data represented in this format has thus led to the need for efficient approaches to compute RDF links between resources based on their temporal properties. Time-efficient approaches for computing links between RDF resources have been developed over the last years. However, dedicated approaches for linking resources based on temporal relations have been paid little attention to. In this paper, we address this research gap by presenting AEGLE, a novel approach for the efficient computation of links between events according to Allen's interval algebra. We study Allen's relations and show that we can reduce all thirteen relations to eight simpler relations. We then present an efficient algorithm with a complexity of O(n log n) for computing these eight relations. Our evaluation of the runtime of our algorithms shows that we outperform the state of the art by up to 4 orders of magnitude while maintaining a precision and a recall of 1.
机译:事件数据越来越多地根据链接的数据原理来表示。因此,对以这种格式表示的数据进行大规模机器学习的需求因此导致了有效方法,以基于其时间特性计算资源之间的RDF链路。在过去几年中开发了在RDF资源之间计算链接的时间有效的计算方法。然而,基于时间关系链接资源的专用方法已经很少关注。在本文中,我们通过呈现Aegle来解决这一研究缺口,这是根据Allen的间隔代数在事件之间有效计算链接的新方法。我们研究了艾伦的关系,表明我们可以将所有十三个关系减少到八个更简单的关系。然后,我们提出了一种有效的算法,具有用于计算这八个关系的O(n log n)的复杂性。我们对算法运行时间的评估表明,我们在保持最多4个数量级,同时保持精度和召回1的次数优于4个数量级。

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