[1] HE K, ZHANG X, REN S, et al. Deep residual learning for image recognition[C]//IEEE Conference on Computer Vision and Pattern Recognition. 2016.
[2] MCMAHAN B, MOORE E, RAMAGE D, et al. Communication-efficient learning of deep networks from decentralized data[C]//Artificial intelligence and statistics. PMLR, 2017: 12731282.
[3] LI X, HUANG K, YANG W, et al. On the convergence of fedavg on non-iid data[C]// International Conference on Learning Representations. 2020.
[4] KAIROUZ P, MCMAHAN H B, AVENT B, et al. Advances and open problems in federated learning[J]. Foundations and Trends® in Machine Learning.
[5] LI T, SAHU A K, ZAHEER M, et al. Federated optimization in heterogeneous networks[C]// Proceedings of Machine Learning and Systems. 2020.
[6] WANG J, LIU Q, LIANG H, et al. Tackling the objective inconsistency problem in heterogeneous federated optimization[C]//Advances in Neural Information Processing Systems. 2020.
[7] KARIMIREDDY S P, KALE S, MOHRI M, et al. SCAFFOLD: stochastic controlled averaging for federated learning[C]//International Conference on Machine Learning: volume 119. PMLR, 2020: 5132-5143.
[8] ZHUANG W, GAN X, WEN Y, et al. Collaborative unsupervised visual representation learning from decentralized data[C]//IEEE International Conference on Computer Vision. IEEE, 2021: 4892-4901.
[9] LI X, QU Z, TANG B, et al. Fedlga: Towards system-heterogeneity of federated learning via local gradient approximation[J]. CoRR, 2021, abs/2112.11989.
[10] DIAO E, DING J, TAROKH V. Heterofl: Computation and communication efficient federated learning for heterogeneous clients[C]//International Conference on Learning Representations. OpenReview.net, 2021.
[11] KONEČNÝ J, MCMAHAN H B, YU F X, et al. Federated learning: Strategies for improving communication efficiency[J]. CoRR, 2016, abs/1610.05492.
[12] BOUACIDA N, HOU J, ZANG H, et al. Adaptive federated dropout: Improving communication efficiency and generalization for federated learning[J]. IEEE Conference on Computer Communications Workshops, 2021: 1-6.
[13] ASAD M, MOUSTAFA A, ITO T, et al. Evaluating the communication efficiency in federated learning algorithms[J]. International Conference on Computer Supported Cooperative Work in Design, 2021: 552-557.
[14] ZHU L, LIU Z, HAN S. Deep leakage from gradients[C]//Advances in Neural Information Processing Systems. 2019.
[15] ZHAO B, MOPURI K R, BILEN H. idlg: Improved deep leakage from gradients[J]. CoRR, 2020, abs/2001.02610.
[16] GEIPING J, BAUERMEISTER H, DRÖGE H, et al. Inverting gradients - how easy is it to break privacy in federated learning?[C]//Advances in Neural Information Processing Systems. 2020.
[17] YIN H, MALLYA A, VAHDAT A, et al. See through gradients: Image batch recovery via gradinversion[J]. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2021: 16332-16341.
[18] AWAN S M, LUO B, LI F. Contra: Defending against poisoning attacks in federated learning[C]//European Symposium on Research in Computer Security. 2021.
[19] COSTA G, PINELLI F, SODERI S, et al. Covert channel attack to federated learning systems[J]. CoRR, 2021, abs/2104.10561.
[20] TOLPEGIN V, TRUEX S, GURSOY M E, et al. Data poisoning attacks against federated learning systems[C]//European Symposium on Research in Computer Security. 2020.
[21] LI T, SANJABI M, BEIRAMI A, et al. Fair resource allocation in federated learning[C]// International Conference on Learning Representations. 2020.
[22] LI T, HU S, BEIRAMI A, et al. Ditto: Fair and robust federated learning through personalization[C]//International Conference on Machine Learning. 2021.
[23] HORVÁTH S, LASKARIDIS S, ALMEIDA M, et al. Fjord: Fair and accurate federated learning under heterogeneous targets with ordered dropout[J]. CoRR, 2021, abs/2102.13451.
[24] HAO W, EL-KHAMY M, LEE J, et al. Towards fair federated learning with zero-shot data augmentation[J]. IEEE Conference on Computer Vision and Pattern Recognition Workshops, 2021: 3305-3314.
[25] GUO S, ZENG D. Pedagogical data federation toward education 4.0[C]//International Conference on Frontiers of Educational Technologies. 2020: 51-55.
[26] WU J, HUANG Z, LIU Q, et al. Federated deep knowledge tracing[C]//ACM International Conference on Web Search and Data Mining. 2021: 662-670.
[27] DONG N, VOICULESCU I. Federated contrastive learning for decentralized unlabeled medical images[C]//International Conference on Medical Image Computing and Computer Assisted Intervention: volume 12903. Springer, 2021: 378-387.
[28] CHEN Z, ZHU M, YANG C, et al. Personalized retrogress-resilient framework for real-world medical federated learning[C]//International Conference on Medical Image Computing and Computer Assisted Intervention. Springer, 2021: 347-356.
[29] LIU Q, YANG H, DOU Q, et al. Federated semi-supervised medical image classification via inter-client relation matching[C]//International Conference on Medical Image Computing and Computer Assisted Intervention. 2021.
[30] LIU Q, CHEN C, QIN J, et al. Feddg: Federated domain generalization on medical image segmentation via episodic learning in continuous frequency space[J]. IEEE Conference on Computer Vision and Pattern Recognition, 2021: 1013-1023.
[31] ROTH H R, YANG D, LI W, et al. Federated whole prostate segmentation in MRI with personalized neural architectures[C]//International Conference on Medical Image Computing and Computer Assisted Intervention: volume 12903. Springer, 2021: 357-366.
[32] MILLS J, HU J, MIN G. Communication-efficient federated learning for wireless edge intelligence in iot[J]. IEEE Internet of Things Journal, 2020, 7: 5986-5994.
[33] NGUYEN V D, SHARMA S K, VU T X, et al. Efficient federated learning algorithm for resource allocation in wireless iot networks[J]. IEEE Internet of Things Journal, 2021, 8: 33943409.
[34] ZHAO Y, ZHAO J, JIANG L, et al. Privacy-preserving blockchain-based federated learning for iot devices[J]. IEEE Internet of Things Journal, 2021, 8: 1817-1829.
[35] PANG J, HUANG Y, XIE Z, et al. Realizing the heterogeneity: A self-organized federated learning framework for iot[J]. IEEE Internet of Things Journal, 2021, 8: 3088-3098.
[36] ZHANG W, LU Q, YU Q, et al. Blockchain-based federated learning for device failure detection in industrial iot[J]. IEEE Internet of Things Journal, 2021, 8: 5926-5937.
[37] QI Y, HOSSAIN M S, NIE J, et al. Privacy-preserving blockchain-based federated learning for traffic flow prediction[J]. Future Generation Computer Systems, 2021, 117: 328-337.
[38] LIU Y, JAMES J, KANG J, et al. Privacy-preserving traffic flow prediction: A federated learning approach[J]. IEEE Internet of Things Journal, 2020, 7(8): 7751-7763.
[39] UPRETY A, RAWAT D B, LI J. Privacy preserving misbehavior detection in iov using federated machine learning[C]//Annual Consumer Communications & Networking Conference. IEEE, 2021: 1-6.
[40] LIANG X, LIU Y, CHEN T, et al. Federated transfer reinforcement learning for autonomous driving[J]. CoRR, 2019, abs/1910.06001.
[41] WEI K, LI J, MA C, et al. Vertical federated learning: Challenges, methodologies and experiments[A]. 2022.
[42] LUO X, WU Y, XIAO X, et al. Feature inference attack on model predictions in vertical federated learning[J]. International Conference on Data Engineering, 2021: 181-192.
[43] WU Y, CAI S, XIAO X, et al. Privacy preserving vertical federated learning for tree-based models[J]. Proceedings of the Very Large Data Bases Conference Endowment, 2020, 13: 2090 - 2103.
[44] ZHANG Q, GU B, DENG C, et al. Secure bilevel asynchronous vertical federated learning with backward updating[C]//AAAI Conference on Artificial Intelligence. 2021.
[45] YANG S, REN B, ZHOU X, et al. Parallel distributed logistic regression for vertical federated learning without third-party coordinator: abs/1911.09824[A]. 2019.
[46] LIU Y, KANG Y, XING C, et al. A secure federated transfer learning framework[J]. IEEE Intelligent Systems, 2020, 35: 70-82.
[47] GAO D, LIU Y, HUANG A, et al. Privacy-preserving heterogeneous federated transfer learning[J]. IEEE International Conference on Big Data, 2019: 2552-2559.
[48] CHEN Y, WANG J, YU C, et al. Fedhealth: A federated transfer learning framework for wearable healthcare[J]. IEEE Intelligent Systems, 2020, 35: 83-93.
[49] JU C, GAO D, MANE R, et al. Federated transfer learning for eeg signal classification[J]. International Conference of the IEEE Engineering in Medicine & Biology Society, 2020: 30403045.
[50] CHENG Y, LU J, NIYATO D T, et al. Federated transfer learning with client selection for intrusion detection in mobile edge computing[J]. IEEE Communications Letters, 2022, 26: 552-556.
[51] OTOUM Y, WAN Y, NAYAK A. Federated transfer learning-based IDS for the internet of medical things (iomt)[C]//IEEE Global Communications Conference Workshops. IEEE, 2021: 1-6.
[52] AHMED K M, IMTEAJ A, AMINI M H. Federated deep learning for heterogeneous edge computing[J]. IEEE International Conference on Machine Learning and Applications, 2021: 1146-1152.
[53] KOPPARAPU K, LIN E. Tinyfedtl: Federated transfer learning on tiny devices[J]. CoRR, 2021, abs/2110.01107.
[54] ZHU H, XU J, LIU S, et al. Federated learning on non-iid data: A survey[J]. Neurocomputing, 2021, 465: 371-390.
[55] YUROCHKIN M, AGARWAL M, GHOSH S, et al. Bayesian nonparametric federated learning of neural networks[C]//International Conference on Machine Learning: volume 97. PMLR, 2019: 7252-7261.
[56] DINH C T, TRAN N H, NGUYEN T D. Personalized federated learning with moreau envelopes[C]//Advances in Neural Information Processing Systems. 2020.
[57] HAN S, MAO H, DALLY W J. Deep compression: Compressing deep neural network with pruning, trained quantization and huffman coding[C]//International Conference on Learning Representations. 2016.
[58] HINTON G E, VINYALS O, DEAN J. Distilling the knowledge in a neural network[J]. CoRR, 2015, abs/1503.02531.
[59] ZHANG Y, XIANG T, HOSPEDALES T M, et al. Deep mutual learning[J]. 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition, 2018: 4320-4328.
[60] REDDI S J, CHARLES Z, ZAHEER M, et al. Adaptive federated optimization[C]//International Conference on Learning Representations. 2021.
[61] LECUN Y, BOTTOU L, BENGIO Y, et al. Gradient-based learning applied to document recognition[J]. Proceedings of the IEEE, 1998, 86(11): 2278-2324.
[62] KRIZHEVSKY A, HINTON G, et al. Learning multiple layers of features from tiny images[M]. Citeseer, 2009.
[63] LECUN Y, BOSER B E, DENKER J S, et al. Backpropagation applied to handwritten zip code recognition[J]. Neural computation, 1989, 1(4): 541-551.
[64] LI X, JIANG M, ZHANG X, et al. Fedbn: Federated learning on non-iid features via local batch normalization[C]//International Conference on Learning Representations. 2021.
[65] SUN B, HUO H, YANG Y, et al. Partialfed: Cross-domain personalized federated learning via partial initialization[J]. Advances in Neural Information Processing Systems, 2021, 34.
[66] BILEN H, VEDALDI A. Universal representations: The missing link between faces, text, planktons, and cat breeds[J]. CoRR, 2017, abs/1701.07275.
[67] LI Y, WANG N, SHI J, et al. Adaptive batch normalization for practical domain adaptation[J]. Pattern Recognition, 2018, 80: 109-117.
[68] WANG Y, ZHANG Z, HAO W, et al. Attention guided multiple source and target domain adaptation[J]. IEEE Transactions on Image Processing, 2021, 30: 892-906.
[69] HU J, SHEN L, SUN G. Squeeze-and-excitation networks[C]//IEEE Conference on Computer Vision and Pattern Recognition. IEEE, 2018: 7132-7141.
[70] WOO S, PARK J, LEE J, et al. CBAM: convolutional block attention module[C]//European Conference on Computer Vision: volume 11211. Springer, 2018: 3-19.
[71] WANG Q, WU B, ZHU P, et al. Eca-net: Efficient channel attention for deep convolutional neural networks[C]//IEEE Conference on Computer Vision and Pattern Recognition. 2020.
[72] HOU Q, ZHOU D, FENG J. Coordinate attention for efficient mobile network design[C]//IEEE Conference on Computer Vision and Pattern Recognition. IEEE, 2021: 13713-13722.
[73] NETZER Y, WANG T, COATES A, et al. Reading gigits in natural images with unsupervised feature learning[C]//Neural Information Processing Systems Workshop on Deep Learning and Unsupervised Feature Learning. 2011.
[74] HULL J J. A database for handwritten text recognition research[J]. IEEE Transactions on Pattern Analysis & Machine Intelligence, 1994.
[75] GANIN Y, LEMPITSKY V. Unsupervised domain adaptation by backpropagation[C]// International Conference on Machine Learning. 2015.
[76] ARBELAEZ P, MAIRE M, FOWLKES C C, et al. Contour detection and hierarchical image segmentation[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2011, 33 (5): 898-916.
[77] SAENKO K, KULIS B, FRITZ M, et al. Adapting visual category models to new domains[C]// European Conference on Computer Vision. 2010.
[78] VENKATESWARA H, EUSEBIO J, CHAKRABORTY S, et al. Deep hashing network for unsupervised domain adaptation[C]//IEEE Conference on Computer Vision and Pattern Recognition. 2017.
[79] PENG X, BAI Q, XIA X, et al. Moment matching for multi-source domain adaptation[C]//IEEE International Conference on Computer Vision. 2019.
修改评论