Abstract

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.

Highlights

  • A Clonal Selection Optimization System for Multiparty Secure ComputingE 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 generation of information technology

  • With the widespread application of artificial intelligence in dealing with the complex problems in the smart cities construction, deep modeling and simulation research have become a bridge connecting physical equipment and virtual information space. e related research of deep learning modeling enhances data openness and social involvement in all kinds of scientific research and uses complex scientific theoretical results and big data to modify model parameters, so that the model can better adapt to the simulation requirements of specific fields

  • In the deep learning process, the computer learns the mapping relationship fθ: x ⟶ y between the input feature x and the output feature y through the sample set and predicts the possible output value for the new input value based on this relationship. e gradient descent algorithm is an iterative method used to solve least squares problems, and it is the most commonly used method for solving nonconstrained optimization problems such as deep learning model parameters [2]

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Summary

A Clonal Selection Optimization System for Multiparty Secure Computing

E 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 generation of information technology. E parallel processing system in deep learning links the virtual information space with the physical world, 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 research attempts to improve the privacy security defense capability of the federated learning scheme for big data through differential privacy preprocessing. e 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

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