Private Inference in Directed Networks
Analysis
Key Takeaways
- •Proposes a method for private inference in directed networks using the $p_0$ model.
- •Employs edge-flipping mechanisms under local differential privacy.
- •Provides a private estimator with theoretical guarantees (consistency, normality).
- •Compares different perturbation methods for privacy protection and accuracy.
- •Applies the method to a real-world network (UC Irvine message network).
“The paper introduces a private estimator for the $p_0$ model parameters and demonstrates its asymptotic properties.”