Automatic Reconstruction of Emperor Itineraries from the Regesta Imperii

J. Opitz, Leo Born, Vivi Nastase, Yannick Pultar
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引用次数: 1

Abstract

Historic itinerary research investigates the traveling paths of historic entities, to determine their influence and reach. A potential source of such information are the Regesta Imperii (RI), a large-scale resource for European medieval history research. However, two important intermediate problems must be addressed: 1. place names may be stated as unknown or are left empty; 2., place name queries return large candidate sets of points scattered all across Europe and the correct point must be selected. For 1., we perform a place name completion step to predict place names for regests referencing charters of unknown origin. To address 2., we formulate a graph framework which allows efficient reconstruction of the emperors' itineraries by means of shortest path finding algorithms. Our experiments show that our method predicts coordinates of places with significant correlation to human gold coordinates and significantly outperforms a baseline which selects points randomly from the candidate sets. We further show that the method can be leveraged to detect errors in human coordinate labels of place names.
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《帝国纪事》中皇帝行程表的自动重建
历史路线研究考察历史实体的旅行路径,以确定它们的影响和范围。这些信息的潜在来源是Regesta Imperii (RI),这是一个大型的欧洲中世纪历史研究资源。但是,必须解决两个重要的中间问题:地名可以写明为未知或留空;2.,地点名称查询返回分散在整个欧洲的大型候选点集,必须选择正确的点。为1。,我们执行地名补全步骤来预测引用未知来源的章程的注册的地名。2.解决;,我们制定了一个图框架,允许通过最短寻径算法有效地重建帝企鹅的行程。我们的实验表明,我们的方法预测了与人类黄金坐标有显著相关性的地方的坐标,并且明显优于从候选集中随机选择点的基线。我们进一步表明,该方法可以用来检测地名的人类坐标标签的错误。
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