Conceptos Básicos
Advancing differential privacy practices for real-world applications.
Resumen
The article reviews current practices and methodologies in differential privacy, emphasizing challenges and research directions. It covers infrastructure needs, privacy/utility trade-offs, attacks/auditing, and communication strategies. Public data usage, data-adaptive algorithms, and pitfalls are explored. The importance of usability, trust-building, scalability, security, and modular design in DP infrastructure is highlighted.
Estadísticas
"DP has been widely adopted in academia, public services (Abowd et al., 2022; Abowd, 2018), and several industrial deployments more recently (Apple Differential Privacy Team, 2017; B. Ding et al., 2017; Erlingsson et al., 2014; Hartmann & Kairouz, 2023; Kairouz, McMahan, Song, et al., 2021; Rogers et al., 2021)"
"DP-SGD algorithm includes a clipping step where individual per-example gradients are clipped to have a predefined maximum norm"
"PATE framework employs unlabeled public data using the sample-and-aggregate paradigm"
Citas
"Maintaining trust is crucial for privacy-sensitive software."
"Designing systems to support DP data analysis raises several questions."
"Public data can also be employed for the important task of hyperparameter selection."