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Inference on historical factions based on multi-layered network of historical figures

机译:基于历史数字多层网络的历史派系推断

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With immense influx of historical data, quantitative inferences on history based on machine learning is becoming more prevalent, attracting many researchers. In particular, understanding the dynamics of historical factions is important as they shared academic beliefs, political views and interests, in which the interactions between the factions portray general political, social, and economic structure of a certain era. In recent years, studying such dynamics through network-based methods on human networks, constructed from genealogy data, have shown promising results. In this paper, we enhance the identification of historical factions by exploiting multi-layered network of historical figures. To understand the mechanisms of historical factions, it is pivotal to comprehend the change in relation between important historical events. The proposed method consists of constructing a multi-layered network of historical figures and applying semi-supervised learning framework to identify historical factions. The proposed method was applied to the classification of factions in the political turmoil occurred during the 15th to 16th century Korea. (c) 2020 Elsevier Ltd. All rights reserved.
机译:凭借巨大的历史数据涌入,基于机器学习的历史的定量推断变得越来越普遍,吸引了许多研究人员。特别是,了解历史派系的动态很重要,因为它们分享了学术信仰,政治观点和利益,其中派系之间的互动描绘了一定时代的一般政治,社会和经济结构。近年来,通过基于网络的方法研究了由基于谱系数据构建的网络的方法,已经显示出有前途的结果。在本文中,我们通过利用多层网络的历史数据来增强历史派系的识别。要了解历史派系的机制,它是衡量重要历史事件之间关系的变化。该方法包括构建一个多层历史数据网络,并应用半监督学习框架来识别历史派系。拟议的方法适用于朝鲜15至16世纪的政治动荡中派系的分类。 (c)2020 elestvier有限公司保留所有权利。

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