AI Ethics
Differential privacy is a technique used to ensure that the privacy of individuals in a dataset is protected while still allowing for useful data analysis. It achieves this by adding randomness to the output of queries made on the data, ensuring that the results do not reveal whether any individual’s data was included in the input dataset. This balance allows organizations to utilize sensitive data without compromising individual privacy, making it crucial in areas like AI systems, utility in applications, and healthcare.
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