Integrating Explainable AI with Federated Learning for Next-Generation IoT: A comprehensive review and prospective insights

IF 13.3 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Computer Science Review Pub Date : 2024-12-06 DOI:10.1016/j.cosrev.2024.100697
Praveer Dubey, Mohit Kumar
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Abstract

The emergence of the Internet of Things (IoT) signifies a transformative wave of innovation, establishing a network of devices designed to enrich everyday experiences. Developing intelligent and secure IoT applications without compromising user privacy and the transparency of model decisions causes a significant challenge. Federated Learning (FL) serves as a innovative solution, encouraging collaborative learning across a wide range of devices and ensures the protection of user data and builds trust in the process. However, challenges remain, including data variability, potential security vulnerabilities within FL, and the necessity for transparency in decentralized models. Moreover, the lack of clarity associated with traditional AI models raises issues regarding transparency, trust and fairness in IoT applications. The survey examines the integration of Explainable AI (XAI) and FL within the Next Generation IoT framework. It provides a thorough analysis of how XAI techniques can elucidate the mechanisms of FL models, addressing challenges such as communication overhead, data heterogeneity and privacy-preserving explanation methods. The survey brings attention to the benefits of FL, including secure data sharing, effective modeling of heterogeneous data and improved communication and interoperability. Additionally, it presents mathematical formulations of the challenges in FL and discusses potential solutions aimed at enhancing the resilience and scalability of IoT implementations. Eventually, convergence of XAI and FL enhances interpretability and promotes the development of trustworthy and transparent AI systems, establishing a strong foundation for impactful applications in the ever evolving Next-Generation IoT landscape.
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将可解释的人工智能与下一代物联网的联邦学习相结合:全面回顾和前瞻性见解
物联网(IoT)的出现标志着一场变革的创新浪潮,它建立了一个旨在丰富日常体验的设备网络。在不损害用户隐私和模型决策透明度的情况下开发智能和安全的物联网应用程序是一项重大挑战。联邦学习(FL)作为一种创新的解决方案,鼓励跨各种设备的协作学习,确保保护用户数据并在此过程中建立信任。然而,挑战仍然存在,包括数据可变性,FL内部潜在的安全漏洞,以及分散模型透明度的必要性。此外,传统人工智能模型缺乏明确性,引发了物联网应用中透明度、信任和公平性方面的问题。该调查研究了可解释AI (XAI)和FL在下一代物联网框架中的集成。它全面分析了XAI技术如何阐明FL模型的机制,解决诸如通信开销、数据异构性和保护隐私的解释方法等挑战。该调查引起了人们对FL的关注,包括安全的数据共享、异构数据的有效建模以及改进的通信和互操作性。此外,它还提出了FL挑战的数学公式,并讨论了旨在增强物联网实施的弹性和可扩展性的潜在解决方案。最终,XAI和FL的融合增强了可解释性,并促进了可信赖和透明的AI系统的发展,为在不断发展的下一代物联网环境中有影响力的应用奠定了坚实的基础。
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来源期刊
Computer Science Review
Computer Science Review Computer Science-General Computer Science
CiteScore
32.70
自引率
0.00%
发文量
26
审稿时长
51 days
期刊介绍: Computer Science Review, a publication dedicated to research surveys and expository overviews of open problems in computer science, targets a broad audience within the field seeking comprehensive insights into the latest developments. The journal welcomes articles from various fields as long as their content impacts the advancement of computer science. In particular, articles that review the application of well-known Computer Science methods to other areas are in scope only if these articles advance the fundamental understanding of those methods.
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