Efficient, Noise-Tolerant, and Private Learning via Boosting
Bun, Mark, Carmosino, Marco Leandro, Sorrell, Jessica
We introduce a simple framework for designing private boosting algorithms. We give natural conditions under which these algorithms are differentially private, efficient, and noise-tolerant PAC learners. To demonstrate our framework, we use it to construct noise-tolerant and private PAC learners for large-margin halfspaces whose sample complexity does not depend on the dimension. We give two sample complexity bounds for our large-margin halfspace learner. One bound is based only on differential privacy, and uses this guarantee as an asset for ensuring generalization. This first bound illustrates a general methodology for obtaining PAC learners from privacy, which may be of independent interest. The second bound uses standard techniques from the theory of large-margin classification (the fat-shattering dimension) to match the best known sample complexity for differentially private learning of large-margin halfspaces, while additionally tolerating random label noise.
Feb-3-2020
- Country:
- North America > United States > California (0.28)
- Genre:
- Research Report (0.40)
- Industry:
- Information Technology > Security & Privacy (0.67)
- Technology: