隐私保护和模型入侵检测联合深度学习的挑战、模式和未来轨迹

Yang Yu, Liao Jianping, Du Weiwei
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引用次数: 0

摘要

深度学习在计算机视觉、多模态、自然语言处理等领域取得了显著的研究进展和广泛的应用。这使得学术界对攻击防御技术在训练和测试阶段的关注日益密切,其中联邦深度学习已经取得了积极的成果。联邦深度学习模型容易记忆隐私和敏感的终端参与者的数据、模型参数,结合模型本身固有的脆弱性,会导致隐私泄露、中毒攻击、模型推理攻击、对抗性攻击。本文简要讨论了联邦深度学习的概念以及安全挑战和开放问题。为了便于理解这些挑战和问题,我们进一步提出了一个安全系统模型。我们还提供了一个概述,并推断出攻击和缓解最复杂的隐私保护和入侵检测模型的方法。在过去的两年里。为了解决这些挑战并启发进一步的加密技术研究,最后,我们讨论和描述了联邦深度学习的当前前景和未来轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Preserving and Models Intrusion Detection Federated Deep Learning Challenges, Schemas and Future Trajectories
Deep learning has made remarkable research advancements and wide-ranging applications in the domains of computer vision, multimodal, natural language processing, additionally, other areas. This has caused the academic community to pay increasingly close attention to the attack and defense technology in its training and testing phases, among which the federal deep learning has produced positive results. Federated deep learning models are prone to memorizing private and sensitive terminal participants' data, model parameters, when combined with the model's inherent vulnerability, they will result in privacy leakage, poisoning attack, model inference attack, adversarial attack. We briefly discuss the conception of federated deep learning as well as security challenges and open questions in this paper. In order to facilitate the understanding of these challenges and problems, we further propose a security system model. We also provide an overview and deduce the attack and mitigation approaches to the most sophisticated privacy-preserving and intrusion detection models. in the last two years. To tackle these challenges and enlighten further encryption techniques researches, finally, we discuss and describe current prospects and future trajectories of federated deep learning.
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