Algorithms for Differentially Private ...
Document type :
Communication dans un congrès avec actes
Title :
Algorithms for Differentially Private Multi-Armed Bandits
Author(s) :
Tossou, Aristide [Auteur]
Dimitrakakis, Christos [Auteur]
Université de Lille, Sciences Humaines et Sociales
Sequential Learning [SEQUEL]
Dimitrakakis, Christos [Auteur]
Université de Lille, Sciences Humaines et Sociales
Sequential Learning [SEQUEL]
Conference title :
AAAI 2016
City :
Phoenix, Arizona
Country :
Etats-Unis d'Amérique
Start date of the conference :
2016-02-11
English keyword(s) :
differential privacy
regret
reinforcement learning
stochastic multi-armed bandits
regret
reinforcement learning
stochastic multi-armed bandits
HAL domain(s) :
Statistiques [stat]/Machine Learning [stat.ML]
Informatique [cs]/Cryptographie et sécurité [cs.CR]
Informatique [cs]/Cryptographie et sécurité [cs.CR]
English abstract : [en]
We present differentially private algorithms for the stochastic Multi-Armed Bandit (MAB) problem. This is a problem for applications such as adaptive clinical trials, experiment design, and user-targeted advertising ...
Show more >We present differentially private algorithms for the stochastic Multi-Armed Bandit (MAB) problem. This is a problem for applications such as adaptive clinical trials, experiment design, and user-targeted advertising where private information is connected to individual rewards. Our major contribution is to show that there exist $(\epsilon, \delta)$ differentially private variants of Upper Confidence Bound algorithms which have optimal regret, $O(\epsilon^{-1} + \log T)$. This is a significant improvement over previous results, which only achieve poly-log regret $O(\epsilon^{-2} \log^{2} T)$, because of our use of a novel interval-based mechanism. We also substantially improve the bounds of previous family of algorithms which use a continual release mechanism. Experiments clearly validate our theoretical bounds.Show less >
Show more >We present differentially private algorithms for the stochastic Multi-Armed Bandit (MAB) problem. This is a problem for applications such as adaptive clinical trials, experiment design, and user-targeted advertising where private information is connected to individual rewards. Our major contribution is to show that there exist $(\epsilon, \delta)$ differentially private variants of Upper Confidence Bound algorithms which have optimal regret, $O(\epsilon^{-1} + \log T)$. This is a significant improvement over previous results, which only achieve poly-log regret $O(\epsilon^{-2} \log^{2} T)$, because of our use of a novel interval-based mechanism. We also substantially improve the bounds of previous family of algorithms which use a continual release mechanism. Experiments clearly validate our theoretical bounds.Show less >
Language :
Anglais
Peer reviewed article :
Oui
Audience :
Internationale
Popular science :
Non
Collections :
Source :
Files
- https://hal.inria.fr/hal-01234427/document
- Open access
- Access the document
- http://arxiv.org/pdf/1511.08681
- Open access
- Access the document
- https://hal.inria.fr/hal-01234427/document
- Open access
- Access the document
- https://hal.inria.fr/hal-01234427/document
- Open access
- Access the document
- document
- Open access
- Access the document
- 1511.08681
- Open access
- Access the document
- single-mab-aaai16-final.pdf
- Open access
- Access the document