Feb. 7, 2024, 5:43 a.m. | Huiling Tu Shuo Yu Vidya Saikrishna Feng Xia Karin Verspoor

cs.LG updates on arXiv.org arxiv.org

Knowledge graphs (KGs) have garnered significant attention for their vast potential across diverse domains. However, the issue of outdated facts poses a challenge to KGs, affecting their overall quality as real-world information evolves. Existing solutions for outdated fact detection often rely on manual recognition. In response, this paper presents DEAN (Deep outdatEd fAct detectioN), a novel deep learning-based framework designed to identify outdated facts within KGs. DEAN distinguishes itself by capturing implicit structural information among facts through comprehensive modeling of …

attention challenge cs.ai cs.cl cs.dl cs.lg dean detection diverse domains facts graphs information issue knowledge knowledge graphs paper quality recognition solutions vast world

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