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A Knowledge Graph Perspective on Supply Chain Resilience

15 May 2023
Yushan Liu
Bailan He
Marcel Hildebrandt
Maximilian Buchner
Daniela Inzko
Roger Wernert
Emanuel Weigel
Dagmar Beyer
Martin Berbalk
Volker Tresp
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Abstract

Global crises and regulatory developments require increased supply chain transparency and resilience. Companies do not only need to react to a dynamic environment but have to act proactively and implement measures to prevent production delays and reduce risks in the supply chains. However, information about supply chains, especially at the deeper levels, is often intransparent and incomplete, making it difficult to obtain precise predictions about prospective risks. By connecting different data sources, we model the supply network as a knowledge graph and achieve transparency up to tier-3 suppliers. To predict missing information in the graph, we apply state-of-the-art knowledge graph completion methods and attain a mean reciprocal rank of 0.4377 with the best model. Further, we apply graph analysis algorithms to identify critical entities in the supply network, supporting supply chain managers in automated risk identification.

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