Single Index Bandits: Generalized Linear Contextual Bandits with Unknown Reward Functions
- URL: http://arxiv.org/abs/2506.12751v1
- Date: Sun, 15 Jun 2025 07:19:00 GMT
- Title: Single Index Bandits: Generalized Linear Contextual Bandits with Unknown Reward Functions
- Authors: Yue Kang, Mingshuo Liu, Bongsoo Yi, Jing Lyu, Zhi Zhang, Doudou Zhou, Yao Li,
- Abstract summary: We introduce a new problem of generalized linear bandits with unknown reward functions, also known as single index bandits.<n>We first consider the case where the unknown reward function is monotonically increasing, and propose two novel and efficient algorithms, STOR and ESTOR.<n>We then extend our methods to the high-dimensional sparse setting and show that the same regret rate can be attained with the sparsity index.
- Score: 8.48717433940334
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Generalized linear bandits have been extensively studied due to their broad applicability in real-world online decision-making problems. However, these methods typically assume that the expected reward function is known to the users, an assumption that is often unrealistic in practice. Misspecification of this link function can lead to the failure of all existing algorithms. In this work, we address this critical limitation by introducing a new problem of generalized linear bandits with unknown reward functions, also known as single index bandits. We first consider the case where the unknown reward function is monotonically increasing, and propose two novel and efficient algorithms, STOR and ESTOR, that achieve decent regrets under standard assumptions. Notably, our ESTOR can obtain the nearly optimal regret bound $\tilde{O}_T(\sqrt{T})$ in terms of the time horizon $T$. We then extend our methods to the high-dimensional sparse setting and show that the same regret rate can be attained with the sparsity index. Next, we introduce GSTOR, an algorithm that is agnostic to general reward functions, and establish regret bounds under a Gaussian design assumption. Finally, we validate the efficiency and effectiveness of our algorithms through experiments on both synthetic and real-world datasets.
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