IEEE Access (Jan 2023)

A Data Deduplication Scheme Based on DBSCAN With Tolerable Clustering Deviation

  • Yan Teng,
  • Hequn Xian,
  • Quanli Lu,
  • Feng Guo

DOI
https://doi.org/10.1109/ACCESS.2022.3231604
Journal volume & issue
Vol. 11
pp. 9742 – 9750

Abstract

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To protect data privacy, users prefer to store encrypted data in cloud servers. Cloud servers reduce the cost of storage and network bandwidth by eliminating duplicate copies. To address the potential internal data leakage problem, the concept of clustering deviation is proposed for the first time. We improve the DBSCAN algorithm to tolerate clustering deviation. A data deduplication scheme is built upon the new algorithm, which considers users as clustering samples. Instead of immediately re-clustering new users, a certain deviation is tolerated to assign the users to the existing classes. We determine the popularity of the data according to user clustering results and apply different encryption schemes to protect the security of unpopular data more effectively. The performance of the algorithm is analyzed and compared with other methods through experiments, and the results verify the feasibility and efficiency of the proposed deduplication scheme.

Keywords