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In today's data-driven world, machine learning holds immense potential for innovation and discovery, but it comes at a cost-individual privacy. The need to balance insights of data with the protection of privacy information raised to the privacy preserving methods. This paper explores powerful techniques, Differential Privacy and Re-identification attack mechanisms, as means to safeguard privacy while enabling meaningful data analysis. Differential Privacy quantifies and controls privacy risks in data analysis. We discuss the strengths and limitations of both techniques and propose a hybrid approach to leverage their synergies. This hybrid solution is particularly valuable in contexts where strong privacy guarantees are paramount, such as medical research, finance, and confidential data analysis. As data privacy concerns grow, the integration of Differential Privacy and re-identification methods generates a promising pathway to unlocking the full potential of machine learning while preserving individual privacy.
Kumar et al. (Fri,) studied this question.