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该项任务以“CCF-蚂蚁科研基金图计算专项”申请进行驱动,开始探索图上隐私计算的内容,属于非常前沿的技术,能够为 OpenRank 后续在企业落地应用提供关键的技术支撑,欢迎大家多参与。
相关安排如下:
The text was updated successfully, but these errors were encountered:
几篇相关论文可以一起参考下,大家可以补充:
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1.1. 基金题目:基于隐私保护多方图学习的异常检测、社群挖掘与影响力评估问题
1.2. 背景及研究意义 (彭佳恒)
1.3. 研究目标(黄帆-社群挖掘,张震-异常检测)
1.4. 研究方法(韩凡宇)
几篇相关论文可以一起参考下,大家可以补充: A federated graph neural network framework for privacy-preserving personalization Privacy-Preserving Graph Machine Learning from Data to Computation: A Survey Decentralized Graph Neural Network for Privacy-Preserving Recommendation A Survey of Trustworthy Graph Learning Vertically Federated Graph Neural Network for Privacy-Preserving Node Classification Federated Heterogeneous Graph Neural Network for Privacy-preserving Recommendation
我来补充两篇中文的吧,
will-ww
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该项任务以“CCF-蚂蚁科研基金图计算专项”申请进行驱动,开始探索图上隐私计算的内容,属于非常前沿的技术,能够为 OpenRank 后续在企业落地应用提供关键的技术支撑,欢迎大家多参与。
相关安排如下:
The text was updated successfully, but these errors were encountered: