Toward the Automated Construction of Probabilistic Knowledge Graphs for the Maritime Domain

Fatemeh Shiri, Teresa Wang, Shirui Pan, Xiaojun Chang, Yuan-Fang Li, Gholamreza Haffari, V. Nguyen, Shuang Yu
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引用次数: 2

Abstract

International maritime crime is becoming increasingly sophisticated, often associated with wider criminal networks. Detecting maritime threats by means of fusing data purely related to physical movement (i.e., those generated by physical sensors, or hard data) is not sufficient. This has led to research and development efforts aimed at combining hard data with other types of data (especially human-generated or soft data). Existing work often assumes that input soft data is available in a structured format, or is focused on extracting certain relevant entities or concepts to accompany or annotate hard data. Much less attention has been given to extracting the rich knowledge about the situations of interest implicitly embedded in the large amount of soft data existing in unstructured formats (such as intelligence reports and news articles). In order to exploit the potentially useful and rich information from such sources, it is necessary to extract not only the relevant entities and concepts, but also their semantic relations, together with the uncertainty associated with the extracted knowledge (i.e., in the form of probabilistic knowledge graphs). This will increase the accuracy of, and confidence in, the extracted knowledge and facilitate subsequent reasoning and learning. To this end, we propose Maritime DeepDive, an initial prototype for the automated construction of probabilistic knowledge graphs from natural language data for the maritime domain. In this paper, we report on the current implementation of Maritime DeepDive, together with preliminary results on extracting probabilistic events from maritime piracy incidents. This pipeline was evaluated on a manually crafted gold standard, yielding promising results.
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面向海事领域的概率知识图自动构建研究
国际海上犯罪正变得越来越复杂,往往与更广泛的犯罪网络有关。通过融合纯粹与物理运动相关的数据(即由物理传感器或硬数据产生的数据)来检测海上威胁是不够的。这导致了旨在将硬数据与其他类型的数据(特别是人为生成的或软数据)相结合的研究和开发工作。现有的工作通常假设输入的软数据以结构化格式可用,或者专注于提取某些相关实体或概念来伴随或注释硬数据。很少有人关注如何从存在于非结构化格式(如情报报告和新闻文章)中的大量软数据中提取有关感兴趣的情况的丰富知识。为了从这些资源中挖掘潜在的有用和丰富的信息,不仅需要提取相关的实体和概念,还需要提取它们的语义关系,以及与提取的知识相关的不确定性(即以概率知识图的形式)。这将增加提取知识的准确性和信心,并促进后续的推理和学习。为此,我们提出了Maritime DeepDive,这是一个从海事领域的自然语言数据自动构建概率知识图的初始原型。在本文中,我们报告了海上深潜的当前实施情况,以及从海盗事件中提取概率事件的初步结果。该管道在手工制作的金标准上进行评估,产生了有希望的结果。
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