Submitted:
13 August 2025
Posted:
18 August 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Privacy Leakage of Membership Reasoning Attacks in Federated Learning
3. Multilayer Defense Model Design Based onFeature Perturbation and Model Regularization
3.1. General Architecture of Multilayer Defense Framework
3.2. Feature Perturbation Strategy
3.3. Model regularization methods
| Regularization Term Type | Notation | Common Value Range | Description of the Role |
| Weight decay (L2) | Controlling model complexity, suppressing overfitting, and weakening parameter bias toward specific data fits | ||
| Entropy smoothing constraints | Enhancing the uniformity of the output probability distribution and the uncertainty of the state of existence of the members | ||
| gradient direction penalty | 0.3 to 0.8 | Suppressing High Consistency of Gradient Orientation in Successive Training Rounds Breaks Predictability Patterns |
3.4. Defense Model Optimization Algorithm
| Retrieve a Value | Regular Loss | Average Gradient Offset |
| 1e-3 | 0.864 | 0.079 |
| 6e-4 | 0.521 | 0.066 |
| 2e-4 | 0.238 | 0.041 |
4. Experimental Results and Analysis
4.1. Experimental Environment and Data Set Construction
4.2. Analysis of Experimental Results
| Defensive Strategy | Data Set | Top-1 Accuracy (%) | Convergence Rounds (math.) | Average Communication Delay (ms) | Avg Gradient Norm |
| defenseless | CIFAR-100 | 78.3 | 123 | 205 | 1.264 |
| Multi-layered joint defense (complete) | 75.1 | 132 | 231 | 0.883 | |
| defenseless | Purchase-100 | 86.9 | 96 | 187 | 1.479 |
| Multi-layered joint defense (complete) | 84.4 | 105 | 215 | 0.911 |
5. Conclusion
References
- Sandeepa C, Siniarski B, Wang S, et al. Rec-def: a recommendation-based defense mechanism for privacy preservation in federated learning systems[J]. IEEE Transactions on Consumer Electronics, 2023, 70(1): 2716-2728.
- Li, Zhengyang, et al. “A comprehensive review of multi-agent reinforcement learning in video games.” Authorea Preprints (2025).
- Zhang, Zhenhua, et al. “AnnCoder: A mti-Agent-Based Code Generation and Optimization Model.” (2025).
- Han C, Yang T, Sun X, et al. Secure Hierarchical Federated Learning for Large-Scale AI Models: poisoning Attack Defense and Privacy Preservation in AIoT [ J]. Electronics, 2025, 14(8): 1611.
- Li, X., Lin, Y., and Zhang, Y. (2025). A privacy-preserving framework for advertising personalization incorporating federated learning and differential privacy. arXiv preprint arXiv:2507.12098.
- Li, X., Wang, X., and Lin, Y. (2025). A graph neural network enhanced sequential recommendation method for cross-platform ad campaigns. arXiv preprint arXiv:2507.08959.
- Sha, F., Ding, C., Zheng, X., Wang, J., and Tao, Y. (2025). Weathering the policy storm: How trade uncertainty shapes firm financial performance through innovation and operations. International Review of Economics & Finance104274.
- Sha, F., Meng, J., Zheng, X., and Jiang, Y. (2025). Sustainability under fire: How China-US tensions impact corporate ESG performance?. Finance Research Letters107882.
- Wang, H. (2025). Joint training of propensity model and prediction model via targeted learning for recommendation on data missing not at random. In: Proceedings of the AAAI 2025 Workshop on Artificial Intelligence with Causal Techniques.
- Abdel-Basset M, Hawash H, Moustafa N, et al. Privacy-preserved learning from non-iid data in fog-assisted IoT: A federated learning approach[J]. Digital Communications and Networks, 2024, 10(2): 404-415.
- Qu Y, Uddin M P, Gan C, et al. Blockchain-enabled federated learning: a survey[J]. ACM Computing Surveys, 2022, 55(4): 1-35.
- Yang, J., Wu, Y., Yuan, Y., Xue, H., Bourouis, S., Abdel-Salam, M., ..., and Por, L. Y. (2025). Llm-ae-mp: Web attack detection using a large language model with autoencoder and multilayer perceptron. Expert Systems with Applications274, 126982.
- Xu X, Li H, Li Z, et al. Safe: synergic data filtering for federated learning in cloud-edge computing[J]. IEEE Transactions on Industrial Informatics, 2022, 19(2): 1655-1665.
- Yang, W., Lin, Y., Xue, H., and Wang, J. (2025). Research on stock market sentiment analysis and prediction method based on convolutional neural network.
- Yang, W., Zhang, B., and Wang, J. (2025). Research on AI economic cycle prediction method based on big data.
- Yang L T, Zhao R, Liu D, et al. Tensor-empowered federated learning for cyber-physical-social computing and communication systems[J]. IEEE Communications Surveys & Tutorials, 2023, 25(3): 1909-1940.
- Garroppo R G, Giardina P G, Landi G, et al. Trustworthy AI and Federated Learning for Intrusion Detection in 6G-Connected Smart Buildings[J]. Future Internet, 2025, 17(5): 191.
- Fujiang Y, Zihao Z, Jiang Y, et al. AI-Driven Optimization of Blockchain Scalability, Security, and Privacy Protection[J]. Algorithms, 2025, 18(5): 263.
- Zheng G, Kong L, Brintrup A. Federated machine learning for privacy preserving, collective supply chain risk prediction[J]. International Journal of Production Research, 2023, 61(23): 8115-8132.
- Kumar S, Chaube M K, Nenavath S N, et al. Privacy preservation and security challenges: a new frontier multimodal machine learning research[J]. International Journal of Sensor Networks, 2022, 39(4): 227-245.



| Attack Type | Dataset | Description of Attack Method | MISR (%) | Top-1 Accuracy (%) |
| White-box Gradient Inversion | CIFAR-100 | Reconstructing inputs from raw gradients | 18.3 | 75.1 |
| Black-box Output Probability Attack | CIFAR-100 | Inferring membership via output logits | 22.6 | 75.1 |
| Shadow Model Attack | CIFAR-100 | Training mimic models with auxiliary data | 24.1 | 74.9 |
| White-box Gradient Inversion | Purchase-100 | Reconstructing inputs from raw gradients | 19.6 | 84.4 |
| Black-box Output Probability Attack | Purchase-100 | Inferring membership via output logits | 23.7 | 84.1 |
| Shadow Model Attack | Purchase-100 | Training mimic models with auxiliary data | 25.3 | 83.8 |
| Defense Strategy | Dataset | Attack Accuracy (%) | False Positive Rate (FPR, %) | Membership Inference Success Rate (MISR, %) |
| No Defense | CIFAR-100 | 84.2 | 18.7 | 65.4 |
| Feature Perturbation Only | CIFAR-100 | 63.5 | 27.9 | 41.2 |
| Feature Perturbation + Gradient Compression | CIFAR-100 | 49.6 | 33.8 | 26.9 |
| Full Defense Strategy (All Components) | CIFAR-100 | 34.7 | 41.5 | 18.3 |
| No Defense | Purchase-100 | 91.6 | 14.2 | 71.8 |
| Feature Perturbation Only | Purchase-100 | 68.1 | 25.4 | 48.7 |
| Feature Perturbation + Gradient Compression | Purchase-100 | 52.7 | 31.6 | 29.4 |
| Full Defense Strategy (All Components) | Purchase-100 | 38.1 | 39.1 | 19.6 |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).