An Efficient K-Means Clustering by using Combination of Additive and Multiplicative Data Perturbation for Privacy Preserving Data Mining

The collection of digital information by governments, corporations and individuals has created tremendous opportunities for knowledge and information-based decision making. Driven by mutual benefits, or by regulations that require certain data to be published, there is a demand for the exchange and publication of data among various parties. Data in its original form, however, typically contains sensitive information about individuals, and publishing such data will violate individual privacy. Privacy Preserving Data Mining (PPDM) tends to transform original data, so that sensitive data are preserved.

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Resource Details

Provided by:
International Journal of Scientific and Research Publication (IJSRP)
Topic:
Data Management
Format:
PDF