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A dataset for connecting similar past and present causalities

机译:用于连接过去和现在的相似因果关系的数据集

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摘要

In this data article, we present a dataset that includes past causalities and categories to connect similar past and present causalities. First, we collect past causalities by referencing certain well-known Japanese high-school textbooks. Subsequently, we select 138 causalities that are useful for analogizing from the causalities to considering solutions for confront present social issues. To enhance the analogy, we describe each causality in three contexts: background including problems, solution methods, and their results. We define 13 categories based on the selected causalities and Encyclopedia of Historiography. The past causalities belong to more than one category. In addition, to train machine learning models including classifier, we collect 900 past events from Wikipedia, and assign one or more categories to the past event data. We perform statistical analyses to understand the quality of the dataset. The proposed applications of the dataset include training machine learning models such as classifiers for past causalities and information retrieval for ranking present social issues according to the similarities between the present and past causalities.
机译:在此数据文章中,我们提供了一个数据集,该数据集包括过去的因果关系和类别,以连接相似的过去和现在的因果关系。首先,我们通过参考某些日本著名的高中教科书来收集过去的因果关系。随后,我们选择了138个因果关系,这些因果关系可用于从因果关系考虑考虑解决当前社会问题的解决方案。为了增强类比,我们在三种情况下描述每个因果关系:包括问题的背景,解决方法及其结果。我们根据所选因果关系和《史学大全》定义了13个类别。过去的因果关系不只属于一类。此外,为了训练包括分类器的机器学习模型,我们从Wikipedia收集了900个过去的事件,并为过去的事件数据分配了一个或多个类别。我们进行统计分析以了解数据集的质量。数据集的拟议应用包括训练机器学习模型,例如用于过去因果关系的分类器,以及用于根据当前和过去因果关系之间的相似性对当前社会问题进行排名的信息检索。

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