E3S Web of Conferences (Jan 2023)

Privacy-Preserving Data Mining and Analytics in Big Data

  • Basha M. John,
  • Murthy T. Satyanarayana,
  • Valarmathy A.S.,
  • Abbas Ahmed Radie,
  • Gavhar Djuraeva,
  • Rajavarman R.,
  • Parkunam N.

DOI
https://doi.org/10.1051/e3sconf/202339904033
Journal volume & issue
Vol. 399
p. 04033

Abstract

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Privacy concerns have gotten more attention as Big Data has spread. The difficulties of striking a balance between the value of data and individual privacy have led to the emergence of privacy-preserving data mining and analytics approaches as a crucial area of research. An overview of the major ideas, methods, and developments in privacy-preserving data mining and analytics in the context of Big Data is given in this abstract. Data mining that protects privacy tries to glean useful insights from huge databases while shielding the private data of individuals. Commonly used in traditional data mining methods, sharing or pooling data might have serious privacy implications. On the other hand, privacy-preserving data mining strategies concentrate on creating procedures and algorithms that enable analysis without jeopardizing personal information. Finally, privacy-preserving data mining and analytics in the Big Data age bring important difficulties and opportunities. An overview of the main ideas, methods, and developments in privacy-preserving data mining and analytics are given in this abstract. It underscores the value of privacy in the era of data-driven decision-making and the requirement for effective privacy-preserving solutions to safeguard sensitive personal data while facilitating insightful analysis of huge datasets.