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Peter Auer
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Finite-time analysis of the multiarmed bandit problem
P Auer, N Cesa-Bianchi, P Fischer
Machine learning 47 (2), 235-256, 2002
85822002
The nonstochastic multiarmed bandit problem
P Auer, N Cesa-Bianchi, Y Freund, RE Schapire
SIAM Journal on Computing 32 (1), 48-77, 2003
31822003
Using confidence bounds for exploitation-exploration trade-offs
P Auer
Journal of Machine Learning Research 3 (Nov), 397-422, 2002
24302002
Near-optimal regret bounds for reinforcement learning
T Jaksch, R Ortner, P Auer
The Journal of Machine Learning Research 11, 1563-1600, 2010
1606*2010
Gambling in a rigged casino: The adversarial multi-armed bandit problem
P Auer, N Cesa-Bianchi, Y Freund, RE Schapire
Foundations of Computer Science, 1995. Proceedings., 36th Annual Symposium …, 1995
12101995
Gambling in a rigged casino: The adversarial multi-armed bandit problem
RE Schapire, N Cesa-Bianchi, P Auer, Y Freund
Proceedings of IEEE 36th Annual Foundations of Computer Science, 322-322, 1995
12101995
Generic object recognition with boosting
A Opelt, A Pinz, M Fussenegger, P Auer
IEEE Transactions on Pattern Analysis and Machine Intelligence 28 (3), 416-431, 2006
5392006
PAC Subset Selection in Stochastic Multi-armed Bandits.
S Kalyanakrishnan, A Tewari, P Auer, P Stone
ICML 12, 655-662, 2012
4412012
Weak hypotheses and boosting for generic object detection and recognition
A Opelt, M Fussenegger, A Pinz, P Auer
Computer Vision-ECCV 2004, 71-84, 2004
3952004
UCB revisited: Improved regret bounds for the stochastic multi-armed bandit problem
P Auer, R Ortner
Periodica Mathematica Hungarica 61 (1-2), 55-65, 2010
3832010
Adaptive and self-confident on-line learning algorithms
P Auer, N Cesa-Bianchi, C Gentile
Journal of Computer and System Sciences 64 (1), 48-75, 2002
3402002
Adaptive and self-confident on-line learning algorithms
P Auer, N Cesa-Bianchi, C Gentile
Journal of Computer and System Sciences 64 (1), 48-75, 2002
3402002
Logarithmic online regret bounds for undiscounted reinforcement learning
P Auer, R Ortner
NIPS, 49-56, 2006
3112006
Degree of approximation results for feedforward networks approximating unknown mappings and their derivatives
K Hornik, M Stinchcombe, H White, P Auer
Neural Computation 6 (6), 1262-1275, 1994
2751994
Degree of Approximation Results for Feedforward Networks Approximating Unknown Mapping and Their Derivatives
K Honik, M Stinchcombe, H White, P Auer
Neural Computation 6 (6), 1262-1275, 1994
2751994
Improved rates for the stochastic continuum-armed bandit problem
P Auer, R Ortner, C Szepesvári
Learning Theory, 454-468, 2007
2722007
A learning rule for very simple universal approximators consisting of a single layer of perceptrons
P Auer, H Burgsteiner, W Maass
Neural networks 21 (5), 786-795, 2008
2482008
Exponentially many local minima for single neurons
P Auer, M Herbster, MK Warmuth
Advances in neural information processing systems, 316-322, 1996
2471996
Introduction
P Auer, W Maass
Algorithmica 22 (1), 1-2, 1998
197*1998
The Perceptron algorithm versus Winnow: linear versus logarithmic mistake bounds when few input variables are relevant
J Kivinen, MK Warmuth, P Auer
Artificial Intelligence 97 (1-2), 325-343, 1997
191*1997
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