Differentially Private Empirical Risk Minimization.
University of California, San Diego
Abstract
Privacy-preserving machine learning algorithms are crucial for the increasingly common setting in which personal data, such as medical or financial records, are analyzed. We provide general techniques to produce privacy-preserving approximations of classifiers learned via (regularized) empirical risk minimization (ERM). These algorithms are private under the ε-differential privacy definition due to Dwork et al. (2006). First we apply the output perturbation ideas of Dwork et al. (2006), to ERM classification. Then we propose a new method, objective perturbation, for privacy-preserving machine learning algorithm design. This method entails perturbing the objective function before optimizing over classifiers. If…
Citation impact
- FWCI
- 43.41
- Percentile
- 100%
- References
- 48
Authors
3Topics & keywords
- Empirical risk minimization
- Differential privacy
- Computer science
- Differentiable function
- Machine learning
- Artificial intelligence
- Minification
- Benchmark (surveying)