Knowledge Graph Completion
Knowledge graph completion (KGC) aims to infer missing relationships within knowledge graphs, improving their completeness and utility. Current research emphasizes integrating diverse knowledge sources, such as common sense reasoning, external ontologies, and large language models (LLMs), into KGC models, often employing graph neural networks, transformer architectures, and embedding methods. These advancements enhance the accuracy and efficiency of KGC, impacting various applications including question answering, recommendation systems, and risk assessment in cybersecurity. Furthermore, there's a growing focus on improving the interpretability and trustworthiness of KGC models, addressing the "black box" nature of many existing approaches.
Papers
NeuSTIP: A Novel Neuro-Symbolic Model for Link and Time Prediction in Temporal Knowledge Graphs
Ishaan Singh, Navdeep Kaur, Garima Gaur, Mausam
A Knowledge Graph Perspective on Supply Chain Resilience
Yushan Liu, Bailan He, Marcel Hildebrandt, Maximilian Buchner, Daniela Inzko, Roger Wernert, Emanuel Weigel, Dagmar Beyer, Martin Berbalk, Volker Tresp