How do you balance the trade-off between data utility and data confidentiality?

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Data utility and data confidentiality are often conflicting goals in statistical programming. You want to use data to generate insights, predictions, and recommendations, but you also want to protect the privacy and security of the data subjects. How do you balance these trade-offs without compromising either? In this article, we will explore some of the challenges and solutions for achieving data utility and data confidentiality in statistical programming.

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