Providing Humanitarian Relief Support through Knowledge Graphs

Rui Zhu, Ling Cai, Gengchen Mai, C. Shimizu, C. Fisher, K. Janowicz, Anna Lopez-Carr, A. Schroeder, M. Schildhauer, Yuanyuan Tian, Shirly Stephen, Zilong Liu
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引用次数: 3

Abstract

Disasters are often unpredictable and complex events, requiring humanitarian organizations to understand and respond to many different issues simultaneously and immediately. Often the biggest challenge to improving the effectiveness of the response is quickly finding the right expert, with the right expertise concerning a specific disaster type/disaster and geographic region. To assist in achieving such a goal, this paper demonstrates a knowledge graph-based search engine developed on top of an expert knowledge graph. It accommodates three modes of information retrieval, including a follow-your-nose search, an expert similarity search, and a SPARQL query interface. We will demonstrate utilizing the system to rapidly navigate from a hazard event to a specific expert who may be helpful, for example. More importantly, as the data is fully integrated including links between hazards and their abstract topics, we can find experts who have relevant expertise while navigating the graph.
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通过知识图谱提供人道主义救援支持
灾难往往是不可预测和复杂的事件,要求人道主义组织同时并立即了解和应对许多不同的问题。通常,提高响应效率的最大挑战是迅速找到对特定灾害类型/灾害和地理区域具有正确专业知识的合适专家。为了帮助实现这一目标,本文展示了在专家知识图的基础上开发的基于知识图的搜索引擎。它支持三种信息检索模式,包括跟踪搜索、专家相似性搜索和SPARQL查询接口。例如,我们将演示如何利用该系统从危险事件快速导航到可能有帮助的特定专家。更重要的是,由于数据完全集成,包括危害与其抽象主题之间的联系,我们可以在浏览图表时找到具有相关专业知识的专家。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Cat2Type: Wikipedia Category Embeddings for Entity Typing in Knowledge Graphs Toward Measuring the Resemblance of Embedding Models for Evolving Ontologies Cutting Events: Towards Autonomous Plan Adaption by Robotic Agents through Image-Schematic Event Segmentation Predicting SPARQL Query Dynamics Providing Humanitarian Relief Support through Knowledge Graphs
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