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的个人主页 http://shi.buaa.edu.cn/yinrong/zh_CN/index.htm
殷荣,博士,北航副教授。长期从事大模型微调、多模态、智能体Memory/强化学习/自演化、信息内容安全、图神经网络、智能决策、机器学习理论等方向研究,发表顶级会议和期刊论文近40篇,其中 CCF-A/中科院一区论文近30篇,涵盖 NeurIPS、ICML、AAAI、MM、IEEE TIP、IEEE TKDE、IEEE TMM、IEEE TNNLS 和 Information Fusion 等。主持/参与国家级或省部级重点项目20余项,包括国家自然科学基金委青年/面上基金、国家重点研发计划、省重大支撑、中科院特别研究助理项目等。曾入选中国科学院特别研究助理(人才项目)、中国科学院信息工程研究所优秀引进人才,担任10余个CCF-A类国际会议的程序委员,比如:ICML、NeurIPS、ICLR、ACL、MM、JMLR,担任国际期刊 MDPI Mathematics(JCR-Q1)和Cybersecurity(JCR-Q1,CCF-B)客座编辑、信息安全学报(CCF-T2)青年编委,担任 CCF 人工智能与模式识别专委会委员、中国指挥与控制学会情报与智能认知专委会委员。长期在一线科研,具有丰富科研经验,曾指导博士生3年发表8篇CCF-A/中科院一区论文,发表于NeurIPS、ICML、AAAI、TIP、TMM等,获得国家奖学金。与小米/阿里等企业长期合作,可根据需要推荐学生去企业进行科研类实习/工作。
课题组长期接收本科生实习,欢迎申硕士/博士学生提前进组学习,招满即止。
简历发至邮箱:yinrong@buaa.edu.cn。
邮件主题:本科生实习/ 硕士(保/考)/博士(保/考)申请_学校_姓名_年级_专业,附上简历。
希望学生:
具有良好的英语、编程能力;
具有自驱力、主动学习能力,踏实勤奋、积极沟通;
能稳定投入时间,最终产出高水平论文;
本科生有相关专业基础优先,研究生发表过CCF-A/B/一区论文优先;
期待未来彼此信任、并肩作战、共同成长。
部分国际会议/期刊论文:
Feature Decoupling-Based Bilateral Adaptive Personalized Federated Graph Learning. In IEEE Transaction on Multimedia, 2026. (TMM 2026)(CCF-A, 中科院一区,影响因子:9.7)(通讯作者).
Sketch-Based Low-Rank Model Merging with Shared Circulant Transforms. In Proceedings of the 43th International Conference on Machine Learning. (ICML 2026) (CCF-A)(通讯作者).
Self-supervised Continuous Dynamic Graph Representation Learning via Hawkes Processes. In IEEE Transactions on Neural Networks and Learning Systems, 2026. (TNNLS 2026)(中科院一区,影响因子:8.9)(通讯作者).
Multi-Modal Molecular Representation Learning via Structure Awareness. In IEEE Transactions on Image Processing, 2025, 34: 3225-3238. (TIP 2025) (CCF-A,中科院一区,影响因子:13.7)(一作).
SSTAG: Structure-Aware Self-Supervised Learning Method for Text-Attributed Graphs. In Proceedings of Advances in Neural Information Processing Systems, 2025. (NeurIPS 2025) (CCF-A)(通讯作者).
AS-GCL: Asymmetric Spectral Augmentation on Graph Contrastive Learning. In IEEE Transaction on Multimedia, 2025. (TMM 2025)(CCF-A, 中科院一区,影响因子:9.7)(通讯作者).
MapFusion: A novel BEV feature fusion network for multi-modal map construction. In Information Fusion, 2025. (IF 2025)(中科院一区,影响因子:14.8)(共同通讯作者).
SafeMap: Robust HD Map Construction from Incomplete Observations. In Proceedings of the 42th International Conference on Machine Learning. (ICML 2025) (CCF-A).
MSC-Bench: Benchmarking and Analyzing Multi-Sensor Corruption for Driving Perception. In IEEE International Conference on Multimedia & Expo. (ICME 2025) (CCF-B)(共同通讯作者).
FedNK-RF: Federated Kernel Learning with Heterogeneous Data and Optimal Rates. In IEEE Transactions on Neural Networks and Learning Systems, 2025. (TNNLS 2025) (中科院一区,影响因子:8.9).
DADA++: Dual Alignment Domain Adaptation for Unsupervised Video-Text Retrieval. ACM Transactions on Multimedia Computing, Communications, and Applications, 2025. (TOMM 2025) (CCF-B,中科院二区,JCR-Q1)
What Really Matters for Robust Multi-Sensor HD Map Construction? In Proceedings of the IEEE/RSJ International Conference on Intelligent Robots and Systems. (IROS 2025) (CORE-A).
Dual Prompt Clustering: Aligning and Adapting Multi-Views via Prompt Learning. Neurocomputing. (NC 2025) (中科院二区,影响因子:6.5,JCR-Q1).
Improving Mathematical Reasoning Abilities of Small Language Models via Key-Point-Driven Distillation. In Proceedings of International Joint Conference on Neural Networks. (IJCNN 2025) (CORE-A).
Improving Mathematical Reasoning Capabilities of Small Language Models via Feedback-Driven Distillation. In Proceedings of International Joint Conference on Neural Networks. (IJCNN 2025) (CORE-A).
ASWT-SGNN: Adaptive Spectral Wavelet Transform-based Self-Supervised Graph Neural Network. In Proceedings of the 38th AAAI Conference on Artificial Intelligence, 2024, 38(12): 13990-13998. (AAAI 2024) (CCF-A)(通讯作者).
Unbiased and Augmentation-Free Self-Supervised Graph Representation Learning. In Pattern Recognition, 2024. (PR 2024) (中科院一区,影响因子:8)(通讯作者).
FTF-ER: Feature-Topology Fusion-Based Experience Replay Method for Continual Graph Learning. In Proceedings of the ACM Multimedia, 2024: 8336-8344. (MM 2024) (CCF-A).
MapDistill: Boosting Efficient Camera-based HD Map Construction via Camera-LiDAR Fusion Model Distillation. In Proceedings of European Conference on Computer Vision, 2024: 166-183. (ECCV 2024) (CCF-B).
Scalable Kernel k-Means with Randomized Sketching: From Theory to Algorithm. In IEEE Transactions on Knowledge and Data Engineering, 2023, 35(9): 9210-9224. (TKDE 2023) (CCF-A,中科院一区,影响因子:9.235)(一作).
Randomized Sketches for Clustering: Fast and Optimal Kernel k-Means. In Proceedings of Advances in Neural Information Processing Systems, 2022, 35: 6424-6436. (NeurIPS 2022) (CCF-A)(一作).
Distributed Randomized Sketching Kernel Learning. In Proceedings of the 36th AAAI Conference on Artificial Intelligence, 2022, 36(8): 8883-8891. (AAAI 2022) (CCF-A)(一作).
Distributed Nystrom Kernel Learning with Communications. In Proceedings of the 28th International Conference on Machine Learning, PMLR, 2021: 12019-12028. (ICML 2021) (CCF-A)(一作).
Divide-and-Conquer Learning with Nyström: Optimal Rate and Algorithm. In Proceedings of the 34th AAAI Conference on Artificial Intelligence, 2020, 34(04): 6696-6703. (AAAI 2020) (CCF-A)(一作).
Sketch Kernel Ridge Regression using Circulant Matrix: Algorithm and Theory. In IEEE Transactions on Neural Networks and Learning Systems, 2020, 31(9): 3512-3524. (TNNLS 2020) (中科院一区,影响因子:11.683)(一作).
Extremely sparse Johnson-Lindenstrauss transform: From theory to algorithm. In Proceedings of IEEE International Conference on Data Mining, 2020: 1376-1381. (ICDM 2020) (CCF-B)(一作).
Multi-Class Learning using Unlabeled Samples: Theory and Algorithm. In Proceedings of the 28th International Joint Conference on Artificial Intelligence, 2019: 2880-2886. (IJCAI 2019) (CCF-A).
Approximate Manifold Regularization: Scalable Algorithm and Generalization Analysis. In Proceedings of the 28th International Joint Conference on Artificial Intelligence, 2019: 2887-2893. (IJCAI 2019) (CCF-A).
Multi-class learning: From theory to algorithm. In Proceedings of Advances in Neural Information Processing Systems, 2018. (NeurIPS 2018) (CCF-A).
Hashing Based Prediction for Large-Scale Kernel Machine. In Proceedings of the International Conference on Computational Science, 2020: 496-509. (ICCS 2020)(CORE-A).
基于分层状态机行为建模的高隐蔽攻击检测方法。信息安全学报2026。(CCF-T2).