2022
DOI: 10.1109/tns.2022.3162216
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Learning Global Proliferation Expertise Evolution Using AI-Driven Analytics and Public Information

Abstract: Detecting and anticipating global proliferation expertise and capability evolution from unstructured, noisy, and incomplete public data streams is a highly desired, but extremely challenging task. In this article, we present our pioneering data-driven approach to support the non-proliferation mission to detect and explain the evolution of proliferation expertise and capability development globally from terabytes of publicly available information (PAI), focusing on our knowledge extraction pipeline and descript… Show more

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