In a massive IoT systems, large amount of data are collected and stored in clouds, edge devices, and terminals, but the data are mostly isolated. For many new demands of various intelligent applications, self-organized collaborated learning on those data to achieve group decisions has been a new trend. However, in order to reach the goal of group decisions, trust problems on data fusion and model fusion should be solved since the participants may not be trusted. We propose a consistent and trust fusion method with the consortium chain to reach a consensus, and complete the self-organized trusted decentralized collaborated learning. In each consensus process, consensus candidates check others’ trust levels to ensure that they tends to fuse consensus with users with high trust, where the trust levels are evaluated by scores according to their historical behaviors in the past consensus process and stored in the public ledger of blockchain. A trust rewards and punishments method is designed to realize trust incentive consensus, the candidates with higher trust levels have more rights and reputation in the consensus. Simulation results and security analysis show that the method can effectively defend malicious users and data, improve the trust perception performance of the whole federated learning network, and make the federated learning more trusted and stable.

Wang, K., Chen, C., Liang, Z., Hassan, M., Sarne, G., Fotia, L., et al. (2021). A trusted consensus fusion scheme for decentralized collaborated learning in massive IoT domain. INFORMATION FUSION, 72, 100-109 [10.1016/j.inffus.2021.02.011].

A trusted consensus fusion scheme for decentralized collaborated learning in massive IoT domain

Sarne G. M. L.;
2021

Abstract

In a massive IoT systems, large amount of data are collected and stored in clouds, edge devices, and terminals, but the data are mostly isolated. For many new demands of various intelligent applications, self-organized collaborated learning on those data to achieve group decisions has been a new trend. However, in order to reach the goal of group decisions, trust problems on data fusion and model fusion should be solved since the participants may not be trusted. We propose a consistent and trust fusion method with the consortium chain to reach a consensus, and complete the self-organized trusted decentralized collaborated learning. In each consensus process, consensus candidates check others’ trust levels to ensure that they tends to fuse consensus with users with high trust, where the trust levels are evaluated by scores according to their historical behaviors in the past consensus process and stored in the public ledger of blockchain. A trust rewards and punishments method is designed to realize trust incentive consensus, the candidates with higher trust levels have more rights and reputation in the consensus. Simulation results and security analysis show that the method can effectively defend malicious users and data, improve the trust perception performance of the whole federated learning network, and make the federated learning more trusted and stable.
Articolo in rivista - Articolo scientifico
Blockchain; Collaborated learning; Consensus fusion; Consortium chain; Trust evaluation;
Blockchain; Collaborated learning; Consensus fusion; Consortium chain; Trust evaluation
English
27-feb-2021
2021
72
100
109
reserved
Wang, K., Chen, C., Liang, Z., Hassan, M., Sarne, G., Fotia, L., et al. (2021). A trusted consensus fusion scheme for decentralized collaborated learning in massive IoT domain. INFORMATION FUSION, 72, 100-109 [10.1016/j.inffus.2021.02.011].
File in questo prodotto:
File Dimensione Formato  
INFFUS-S-20-01375 pre-review.pdf

Solo gestori archivio

Tipologia di allegato: Submitted Version (Pre-print)
Dimensione 830.1 kB
Formato Adobe PDF
830.1 kB Adobe PDF   Visualizza/Apri   Richiedi una copia

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/325829
Citazioni
  • Scopus 28
  • ???jsp.display-item.citation.isi??? 21
Social impact