混合知识工程构建全球暗杀数据集

Abigail Sticha, Steven Broussard, Ian Havenaar, Charles Vardeman, P. Brenner
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引用次数: 0

摘要

知识工程工具的进步,如命名实体识别、知识图谱和机器学习,使研究人员能够生成新的、更健壮的关联数据集,研究人员可以从中获得新的发现。对于人工智能研究界来说,重要的是继续利用这些工具进行知识发现,同时也要认识到每种工具都有局限性和有效的使用范围。本文试图突出这些工具的局限性,同时结合它们的优势,提出一种利用现有数据库、知识图、NER和ML的新方法,在小型标记数据集和非结构化和不完整的现有数据库的约束下构建知识存储库。实施这种方法是为了建立一个丰富的暗杀数据集,该数据集将公开提供,并有助于未来的政治科学研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Knowledge Engineering to Build a Global Assassination Dataset
Advances in Knowledge Engineering tools such as Named Entity Recognition, Knowledge Graphs, and Machine Learning allow researchers to generate new and more robust linked datasets from which researchers can make new discoveries. It is important for the AI research community to continue leveraging these tools for knowledge discovery while also acknowledging that each tool comes with limitations and an effective scope of use. This paper seeks to highlight the limitations of each of these tools while also uniting each of their strengths to propose a novel methodology leveraging existing databases, knowledge graphs, NER, and ML to build a knowledge repository within the constraints of a small labeled dataset and unstructured and incomplete existing databases. This methodology is implemented to build an enriched assassination dataset that will be made publicly available and assist in future political science research.
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