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The statistical query model (SQ) [Kearns 93] . Instead of independent samples, can ask for statistics about the data . For example: mean, moments, expected loss, gradient
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Interaction Is Necessary for Distributed Learning with Privacy or Communication Constraints
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- 1 Interaction is necessary for distributed learning with privacy or communication constraints Yuval Dagan, MIT Vitaly Feldman, Apple Research was done while at Google Brain
- 2 Non interactive vs. interactive
- 3 Learning with local privacy requires interaction
- 4 Learning with communication constraints
- 5 Outline
- 6 Prior work on private stochastic convex optimization Interactive setting . Non interactive . Upper bound, exponential sample complexity
- 7 Lower bound: stochastic convex optimization of linear models
- 8 Prior work on locally private linear classification Sample bounds for non-interactive algorithms Daniely, Feldman 18
- 9 Lower bound: non-interactive private linear classification Setting: non-interactive ; locally private with parameter e = 1 Thm: The sample complexity is exp min(d, 1/7)(1)
- 10 Proof Techniques
- 11 The statistical query model (SQ) [Kearns 93] . Instead of independent samples, can ask for statistics about the data . For example: mean, moments, expected loss, gradient
- 12 Non interactive statistical queries
- 13 Two non-distinguishable distributions over {-1,1}d
- 14 Summary and open questions • Learning with non-interactive local privacy requires exponential sample complexity