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A Clonal Selection Optimization System for Multiparty Secure Computing

机译:多党安全计算的克隆选择优化系统

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The innovation of the deep learning modeling scheme plays an important role in promoting the research of complex problems handled with artificial intelligence in smart cities and the development of the next generation of information technology. With the widespread use of smart interactive devices and systems, the exponential growth of data volume and the complex modeling requirements increase the difficulty of deep learning modeling, and the classical centralized deep learning modeling scheme has encountered bottlenecks in the improvement of model performance and the diversification of smart application scenarios. The parallel processing system in deep learning links the virtual information space with the physical world, although the distributed deep learning research has become a crucial concern with its unique advantages in training efficiency, and improving the availability of trained models and preventing privacy disclosure are still the main challenges faced by related research. To address these above issues in distributed deep learning, this research developed a clonal selective optimization system based on the federated learning framework for the model training process involving large-scale data. This system adopts the heuristic clonal selective strategy in local model optimization and optimizes the effect of federated training. First of all, this process enhances the adaptability and robustness of the federated learning scheme and improves the modeling performance and training efficiency. Furthermore, this research attempts to improve the privacy security defense capability of the federated learning scheme for big data through differential privacy preprocessing. The simulation results show that the proposed clonal selection optimization system based on federated learning has significant optimization ability on model basic performance, stability, and privacy.
机译:深度学习建模计划的创新在促进智能城市人工智能处理的复杂问题以及下一代信息技术的发展方面发挥着重要作用。随着智能交互设备和系统的广泛使用,数据量的指数增长和复杂的建模要求增加了深度学习建模的难度,并且经典集中的深度学习建模方案在提高模型性能和多元化方面遇到了瓶颈智能应用方案。深度学习中的并行处理系统将虚拟信息空间与物理世界联系起来,尽管分布式的深度学习研究已经成为训练效率的独特优势,并且提高了培训的模型的可用性并防止隐私披露的关键是至关重要的相关研究面临的主要挑战。为了解决上述分布式深度学习问题,这项研究通过涉及大规模数据的模型培训过程的联合学习框架,开发了一种基于联合学习框架的克隆选择优化系统。该系统采用局部模型优化中的启发式克隆选择策略,优化联合培训的影响。首先,该过程提高了联邦学习方案的适应性和鲁棒性,提高了建模性能和培训效率。此外,该研究试图通过差异隐私预处理来改善联邦学习计划的隐私安全防御能力。仿真结果表明,基于联合学习的克隆选择优化系统具有显着的优化能力,用于模型基本性能,稳定性和隐私。

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