A Differential Privacy Collaborative Deep Learning Algorithm in Pervasive Edge Computing Environment
Title | A Differential Privacy Collaborative Deep Learning Algorithm in Pervasive Edge Computing Environment |
Publication Type | Conference Paper |
Year of Publication | 2021 |
Authors | Zhang, Dayin, Chen, Xiaojun, Shi, Jinqiao, Wang, Dakui, Zeng, Shuai |
Conference Name | 2021 IEEE 20th International Conference on Trust, Security and Privacy in Computing and Communications (TrustCom) |
Keywords | Collaboration, collaborative deep learning, Computational modeling, Data models, Deep Learning, Differential privacy, Gaussian mechanism, Human Behavior, human factors, Metrics, Neural networks, Pervasive Computing Security, pervasive edge computing, pubcrawl, resilience, Resiliency, Scalability, Stochastic Computing Security, Training |
Abstract | With the development of 5G technology and intelligent terminals, the future direction of the Industrial Internet of Things (IIoT) evolution is Pervasive Edge Computing (PEC). In the pervasive edge computing environment, intelligent terminals can perform calculations and data processing. By migrating part of the original cloud computing model's calculations to intelligent terminals, the intelligent terminal can complete model training without uploading local data to a remote server. Pervasive edge computing solves the problem of data islands and is also successfully applied in scenarios such as vehicle interconnection and video surveillance. However, pervasive edge computing is facing great security problems. Suppose the remote server is honest but curious. In that case, it can still design algorithms for the intelligent terminal to execute and infer sensitive content such as their identity data and private pictures through the information returned by the intelligent terminal. In this paper, we research the problem of honest but curious remote servers infringing intelligent terminal privacy and propose a differential privacy collaborative deep learning algorithm in the pervasive edge computing environment. We use a Gaussian mechanism that meets the differential privacy guarantee to add noise on the first layer of the neural network to protect the data of the intelligent terminal and use analytical moments accountant technology to track the cumulative privacy loss. Experiments show that with the Gaussian mechanism, the training data of intelligent terminals can be protected reduction inaccuracy. |
DOI | 10.1109/TrustCom53373.2021.00061 |
Citation Key | zhang_differential_2021 |
- Human Factors
- Training
- Scalability
- Resiliency
- resilience
- pubcrawl
- pervasive edge computing
- Pervasive Computing Security
- Neural networks
- Metrics
- Stochastic Computing Security
- Human behavior
- Gaussian mechanism
- differential privacy
- deep learning
- Data models
- Computational modeling
- collaborative deep learning
- collaboration