Beyond Covariance Matrix: The Statistical Complexity of Private Linear Regression
NeutralArtificial Intelligence
Beyond Covariance Matrix: The Statistical Complexity of Private Linear Regression
A recent study published on arXiv delves into the statistical complexity of private linear regression, revealing that the typical covariance matrix does not fully capture the intricacies involved when privacy constraints are applied. Instead, the research highlights the importance of $L_1$ analogues in understanding this complexity. The findings establish minimax convergence rates for both central and local privacy models, which could have significant implications for how data privacy is approached in statistical modeling.
— via World Pulse Now AI Editorial System
