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Privacy Preserving and Data Publishing-Hybrid Approach

Sakshi Jha

Abstract


Information exchange and analyzing the data provides a much easier way to the researchers for doing research that is fundamental and involves various case studies. Data publishing may cause trouble for an individual in case one if suffering from a non-curable disease. In order to maintain the privacy and at the same time publishing data, various data anonymization techniques have been evolved. This paper involves study about these various types of Privacy Preserving and Data Publishing techniques.

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References


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DOI: https://doi.org/10.37628/ijods.v3i2.334

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