计算机科学
适应性
机器学习
图形
人工智能
可转让性
学习迁移
软件部署
标记数据
理论计算机科学
软件工程
生态学
罗伊特
生物
作者
Yun Zhu,Y. Wang,Haizhou Shi,Zhenshuo Zhang,Dian Jiao,Siliang Tang
标识
DOI:10.1145/3589334.3645439
摘要
Graph self-supervised algorithms have achieved significant success in acquiring generic knowledge from abundant unlabeled graph data.These pre-trained models can be applied to various downstream Web applications, saving training time and improving downstream performance.However, variations in attribute semantics across graphs pose challenges in transferring pre-trained models to downstream tasks.Concretely speaking, for example, the additional task-specific node information in downstream tasks (specificity) is usually deliberately omitted so that the pre-trained representation (transferability) can be leveraged.The trade-off as such is termed as "transferability-specificity dilemma" in this work.To address this challenge, we introduce an innovative deployment module coined as GraphControl, motivated by Con-trolNet, to realize better graph domain transfer learning.Specifically, by leveraging universal structural pre-trained models and GraphControl, we align the input space across various graphs and incorporate unique characteristics of target data as conditional inputs.These conditions will be progressively integrated into the model during fine-tuning or prompt tuning through Con-trolNet, facilitating personalized deployment.Extensive experiments show that our method significantly enhances the adaptability of pre-trained models on target attributed datasets, achieving 1.4-3x performance gain.Furthermore, it outperforms trainingfrom-scratch methods on target data with a comparable margin and exhibits faster convergence.
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