What Can We Learn Privately?
Indexed incrossref
Abstract
Learning problems form an important category of computational tasks that generalizes many of the computations researchers apply to large real-life data sets. We ask, What concept classes can be learned privately, namely, by an algorithm whose output does not depend too heavily on any one input or specific training example? More precisely, we investigate learning algorithms that satisfy differential privacy, a notion that provides strong confidentiality guarantees in contexts where aggregate information is released about a database containing sensitive information about individuals. Our goal is a broad understanding of the resources required for private learning in terms of samples, computation time, and…
Citation impact
891
total citations
- FWCI
- 15.82
- Percentile
- 100%
- References
- 20
Citations per year
Authors
5Topics & keywords
Topics
Keywords
- Differential privacy
- Concept class
- Cardinality (data modeling)
- Computer science
- Class (philosophy)
- Logarithm
- Time complexity
- Theoretical computer science
No related works found for this paper.