基于双生物启发Q学习优化的高效动态基于上下文的隐私策略部署模型设计

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Namrata Jiten Patel, Ashish Jadhav
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引用次数: 0

摘要

提出了一种新的基于上下文的隐私策略部署模型,该模型增强了生物启发q学习优化。该模型解决了维护隐私的挑战,同时确保了各种设置下数据的完整性和可用性。利用包括成人(人口普查收入)、Yelp、加州大学欧文分校机器学习和电影镜头在内的数据集,作者根据最先进的技术(如GEF AL、Deep Forest和鲁棒持续学习)评估了模型的性能。该方法采用萤火虫优化器(FFO)和蚂蚁狮子优化器(ALO)算法动态调整隐私参数,有效地处理大型数据集。此外,Q-learning可以实现智能决策,并快速适应不断变化的数据和网络条件和场景。评估结果表明,该模型在多个指标(包括隐私级别、可伸缩性、保真度和敏感性管理)上始终优于参考技术。通过减少声誉损害、最小化延迟和提高网络质量,该模型在不牺牲数据效用的情况下提供了强大的隐私保护。总体而言,一种基于动态上下文的隐私策略部署方法,通过生物启发的Q-learning优化得到增强,在隐私保护方法方面取得了重大进展。ALO、FFO和Q-learning技术的结合为不断变化的数据隐私挑战提供了实用的解决方案,并增强了各种用例场景中的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Design of an efficient dynamic context-based privacy policy deployment model via dual bioinspired Q learning optimisations

Design of an efficient dynamic context-based privacy policy deployment model via dual bioinspired Q learning optimisations

A novel context-based privacy policy deployment model enhanced with bioinspired Q-learning optimisations is presented. The model addresses the challenge of maintaining privacy while ensuring data integrity and usability in various settings. Leveraging datasets including Adult (Census Income), Yelp, UC Irvine Machine Learning, and Movie Lens, the authors evaluate the model's performance against state-of-the-art techniques, such as GEF AL, Deep Forest, and Robust Continual Learning. The approach employs Firefly Optimiser (FFO) and Ant Lion Optimiser (ALO) algorithms to dynamically adjust privacy parameters and handle large datasets efficiently. Additionally, Q-learning enables intelligent decision-making and rapid adaptation to changing data and network conditions and scenarios. Evaluation results demonstrate that the model consistently outperforms reference techniques across multiple metrics, including privacy levels, scalability, fidelity, and sensitivity management. By reducing reputational harm, minimising delays, and enhancing network quality, the model offers robust privacy protection without sacrificing data utility. Overall, a dynamic context-based privacy policy deployment approach, enhanced with bioinspired Q-learning optimisations, presents a significant advancement in privacy preservation methods. The combination of ALO, FFO, and Q-learning techniques offers a practical solution to evolving data privacy challenges and enhances flexibility in various use case scenarios.

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来源期刊
IET Cyber-Physical Systems: Theory and Applications
IET Cyber-Physical Systems: Theory and Applications Computer Science-Computer Networks and Communications
CiteScore
5.40
自引率
6.70%
发文量
17
审稿时长
19 weeks
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