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Knowledge Graphs and Natural-Language Processing

2020-12-15 16:53:28
Andreas L Opdahl

Abstract

Emergency-relevant data comes in many varieties. It can be high volume and high velocity, and reaction times are critical, calling for efficient and powerful techniques for data analysis and management. Knowledge graphs represent data in a rich, flexible, and uniform way that is well matched with the needs of emergency management. They build on existing standards, resources, techniques, and tools for semantic data and computing. This chapter explains the most important semantic technologies and how they support knowledge graphs. We proceed to discuss their benefits and challenges and give examples of relevant semantic data sources and vocabularies. Natural-language texts -- in particular those collected from social media such as Twitter -- is a type of data source that poses particular analysis challenges. We therefore include an overview of techniques for processing natural-language texts.

Abstract (translated)

URL

https://arxiv.org/abs/2101.06111

PDF

https://arxiv.org/pdf/2101.06111.pdf


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