title | abstract | layout | series | publisher | issn | id | month | tex_title | firstpage | lastpage | page | order | cycles | bibtex_author | author | date | address | container-title | volume | genre | issued | extras | ||||||||||||||||||||||||||
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Instance-Wise Minimax-Optimal Algorithms for Logistic Bandits |
Logistic Bandits have recently attracted substantial attention, by providing an uncluttered yet challenging framework for understanding the impact of non-linearity in parametrized bandits. It was shown by Faury et al. (2020) that the learning-theoretic difficulties of Logistic Bandits can be embodied by a large (sometimes prohibitively) problem-dependent constant |
inproceedings |
Proceedings of Machine Learning Research |
PMLR |
2640-3498 |
abeille21a |
0 |
Instance-Wise Minimax-Optimal Algorithms for Logistic Bandits |
3691 |
3699 |
3691-3699 |
3691 |
false |
Abeille, Marc and Faury, Louis and Calauzenes, Clement |
|
2021-03-18 |
Proceedings of The 24th International Conference on Artificial Intelligence and Statistics |
130 |
inproceedings |
|
|