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A systematic survey of point set distance measures for link discovery

机译:链路发现点集距措施的系统调查

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Large amounts of geo-spatial information have been made available with the growth of the Web of Data. While discovering links between resources on the Web of Data has been shown to be a demanding task, discovering links between geo-spatial resources proves to be even more challenging. This is partly due to the resources being described by the means of vector geometry. Especially, discrepancies in granularity and error measurements across data sets render the selection of appropriate distance measures for geo-spatial resources difficult. In this paper, we survey existing literature for point-set measures that can be used to measure the similarity of vector geometries. We then present and evaluate the ten measures that we derived from literature. We evaluate these measures with respect to their time-efficiency and their robustness against discrepancies in measurement and in granularity. To this end, we use samples of real data sets of different granularity as input for our evaluation framework. The results obtained on three different data sets suggest that most distance approaches can be led to scale. Moreover, while some distance measures are significantly slower than other measures, distance measure based on means, surjections and sums of minimal distances are robust against the different types of discrepancies.
机译:已经提供了大量的地理空间信息,并具有数据Web的增长。在已显示数据网络上的资源之间的链接时,已被显示为苛刻的任务,发现地质空间资源之间的链接被证明是更具有挑战性的。这部分是由于矢量几何形状所描述的资源。特别地,跨数据集的粒度和误差测量的差异呈现适当的距离测量对于地质空间资源的选择。在本文中,我们调查了现有文献,以用于测量矢量几何形状的相似性的点设定措施。然后,我们展示并评估我们从文学中获得的十种措施。我们在他们的时间效率和稳健性反对测量和粒度差异的稳健性来评估这些措施。为此,我们使用不同粒度的实际数据集的样本作为我们的评估框架的输入。在三个不同的数据集中获得的结果表明,大多数距离方法都可以引导缩放。此外,虽然一些距离措施比其他措施显着慢,但基于装置的距离测量,距离的距离和最小距离的总和对不同类型的差异是鲁棒的。

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