欧几里得、乌鸦、狼和行人:语言类型学的距离度量。

Open research Europe Pub Date : 2024-07-02 eCollection Date: 2023-01-01 DOI:10.12688/openreseurope.16141.2
Matías Guzmán Naranjo, Gerhard Jäger
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引用次数: 0

摘要

研究语言地理学、语言接触和类型学的人通常会使用某种语言之间的距离度量。然而,迄今为止,大多数工作要么使用欧几里得距离,要么使用大地测量距离,而这两种距离都不能非常准确地表示群落之间的实际分隔情况。本文介绍了两个数据集:一个是步行距离数据集,另一个是所有宏观地区 8700 多个讲座之间的地形距离数据集。我们使用开放街道地图数据计算步行距离,使用数字高程数据计算地形距离。我们在三个案例研究中对这些距离度量进行了评估,结果表明,在这四种距离中,地形距离和大地测量距离在不同数据集之间表现最为一致,很可能成为合理的首选。同时,在大多数情况下,欧氏距离并不比其他距离差多少,在性能要求很高或数据集覆盖面积很大、点定位信息不是很精确的情况下,欧氏距离可能是一个很好的近似值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Euclide, the crow, the wolf and the pedestrian: distance metrics for linguistic typology.

It is common for people working on linguistic geography, language contact and typology to make use of some type of distance metric between lects. However, most work so far has either used Euclidean distances, or geodesic distance, both of which do not represent the real separation between communities very accurately. This paper presents two datasets: one on walking distances and one on topographic distances between over 8700 lects across all macro-areas. We calculated walking distances using Open Street Maps data, and topographic distances using digital elevation data. We evaluate these distance metrics on three case studies and show that from the four distances, the topographic and geodesic distances showed the most consistent performance across datasets, and would be likely to be reasonable first choices. At the same time, in most cases, the Euclidean distances were not much worse than the other distances, and might be a good enough approximation in cases for which performance is critical, or the dataset cover very large areas, and the point-location information is not very precise.

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