面向情境理解的非结构化文本领域特定融合(海报)

E. Bosse, Julian Falardeau, Isabelle Prévost, E. Shahbazian, Olivier Labonté
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引用次数: 1

摘要

本文介绍了一种用于从开源数据(OSD)中提取信息和推理的新工具的初始设计以及当前和设想的功能,即开源信息收集、分析和推理(OSCAR)。它能够摄取和处理大量OSD,以提供关于领域特定情况的情况理解和决策支持。使用自定义创建的知识库(KB)对数据进行预过滤,而使用基于规则的信息提取(RuBIE)提取信息,这是一种自然语言处理(NLP)和标记工具。提取的信息随后被聚类并转换成感兴趣实体的关系图。这一概念验证是在基于2019年委内瑞拉社会危机的用例背景下提出的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Specific Fusion of Unstructured Text for Situation Understanding (Poster)
This paper presents the initial design and the current and envisaged functionalities of a novel tool for information extraction and reasoning from open source data (OSD), namely, the Open Source Information Collection, Analysis and Reasoning (OSCAR). It has the ability to ingest and process vast amount of OSD to provide situation understanding and decision support about domain specific situations. The data are pre-filtered using a custom created knowledge base (KB) while the information is extracted using the Rule Based Information Extraction (RuBIE), a Natural Language Processing (NLP) and tagging tool. The extracted information is subsequently clustered and transformed into a relation graph of entities of interest. This proof of concept is presented in the context of a use case based on the social crisis in Venezuela in 2019.
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