Blockchain Integrated Federated Learning in Edge-Fog-Cloud Systems for IoT based Healthcare Applications A Survey
- URL: http://arxiv.org/abs/2406.05517v1
- Date: Sat, 8 Jun 2024 16:36:48 GMT
- Title: Blockchain Integrated Federated Learning in Edge-Fog-Cloud Systems for IoT based Healthcare Applications A Survey
- Authors: Shinu M. Rajagopal, Supriya M., Rajkumar Buyya,
- Abstract summary: Federated learning, a new distributed paradigm, supports collaborative learning while preserving privacy.
The integration of federated learning and blockchain is particularly advantageous for handling sensitive data, such as in healthcare.
This survey article explores the architecture, structure, functions, and characteristics of federated learning and blockchain, their applications in various computing paradigms, and evaluates their implementations in healthcare.
- Score: 18.36339203254509
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Modern Internet of Things (IoT) applications generate enormous amounts of data, making data-driven machine learning essential for developing precise and reliable statistical models. However, data is often stored in silos, and strict user-privacy legislation complicates data utilization, limiting machine learning's potential in traditional centralized paradigms due to diverse data probability distributions and lack of personalization. Federated learning, a new distributed paradigm, supports collaborative learning while preserving privacy, making it ideal for IoT applications. By employing cryptographic techniques, IoT systems can securely store and transmit data, ensuring consistency. The integration of federated learning and blockchain is particularly advantageous for handling sensitive data, such as in healthcare. Despite the potential of these technologies, a comprehensive examination of their integration in edge-fog-cloud-based IoT computing systems and healthcare applications is needed. This survey article explores the architecture, structure, functions, and characteristics of federated learning and blockchain, their applications in various computing paradigms, and evaluates their implementations in healthcare.
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