Next-Generation Consumer Electronics Data Auditing Scheme Toward Cloud-Edge Distributed and Resilient Machine Learning

  • Yi Li
  • , Jian Shen*
  • , Pandi Vijayakumar*
  • , Chin Feng Lai
  • , Audithan Sivaraman
  • , Pradip Kumar Sharma
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

32 Citations (Scopus)

Abstract

Distributed and resilient machine learning (DRML) endues next-generation consumer electronics with AI function. Intuitively, AI provides innovative, humanized, convenient applications based on the data extended by next-generation consumer electronics. Cloud-edge computing is an ideal undertaken architecture of DRML due to its distributed property. However, as one of the core elements driving AI applications, data could be lost or corrupted owing to damaged electronics, unstable communication, and even cloud providers' malicious behavior. It is essential to ensure the data integrity of next-generation electronics before AI applications. To this end, we proposed a privacy-protection distributed data auditing scheme for cloud-edge DRML. An efficient data integrity verification method that only uses algebraic operation is constructed. Then, Function Secret Share (FSS) extends the data integrity verification method to protect consumer privacy. Besides, a consensus for data auditing results is designed among the edge servers. Finally, we present an abundance of theoretical analyses and experimental findings to substantiate and validate the efficiency and effectiveness of our proposed scheme.

Original languageEnglish
Pages (from-to)2244-2256
Number of pages13
JournalIEEE Transactions on Consumer Electronics
Volume70
Issue number1
DOIs
Publication statusPublished - 26 Feb 2024

Keywords

  • blockchain
  • data auditing
  • distributed and resilient machine learning (DRML)
  • edge computing
  • Next-generation consumer electronics

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