Applications of Model Evolution in Few-Shot Graph Learning and Exploration of Large language Model Self-Evolution Mechanisms.

发布时间:2024-10-11浏览次数:95

题目:Applications of Model Evolution in Few-Shot Graph Learning and Exploration of Large language Model Self-Evolution Mechanisms.


报告人:李东(哈尔滨工业大学)


时间:2024.10.14 ,9:00-10:00 

地点:明德楼B201-1


摘要:This report explores the application of model evolution in few-shot learning on graphs and graph representation learning, with a particular focus on enhancing the generalization ability of models in few-shot scenarios through continuous learning mechanisms. Building on this foundation, we further investigate the self-evolution mechanisms of large language models, including experience acquisition, self-optimization in dynamic environments, and potential self-feedback mechanisms. Finally, we provide insights into the prospects of leveraging graph neural networks to facilitate the self-evolution of large language models.



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