Efficient Knowledge Graph Construction with Pre-trained Language Models
Deep Learning for and with Knowledge Graphs Track
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24m
We aim to bring interested researchers uKnowledge graph construction which aims to extract knowledge from the text corpus, has appealed to researchers. Previous decades have witnessed the remarkable progress of knowledge graph construction on the basis of neural models; however, those models often cost massive computation or labeled data resources. Recently, numerous approaches have been explored to mitigate the efficiency issues for knowledge graph construction, such as prompt learning. In this talk, we aim to bring interested researchers up to speed on the recent and ongoing techniques for efficient knowledge graph construction with pre-trained language models.p to speed on the recent and ongoing techniques for efficient knowledge graph construction.
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