Adaptive Exploration-Exploitation Tradeoff for Opportunistic Bandits

September 12, 2017 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning

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Authors Huasen Wu, Xueying Guo, Xin Liu arXiv ID 1709.04004 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 29 Venue International Conference on Machine Learning Last Checked 4 months ago
Abstract
In this paper, we propose and study opportunistic bandits - a new variant of bandits where the regret of pulling a suboptimal arm varies under different environmental conditions, such as network load or produce price. When the load/price is low, so is the cost/regret of pulling a suboptimal arm (e.g., trying a suboptimal network configuration). Therefore, intuitively, we could explore more when the load/price is low and exploit more when the load/price is high. Inspired by this intuition, we propose an Adaptive Upper-Confidence-Bound (AdaUCB) algorithm to adaptively balance the exploration-exploitation tradeoff for opportunistic bandits. We prove that AdaUCB achieves $O(\log T)$ regret with a smaller coefficient than the traditional UCB algorithm. Furthermore, AdaUCB achieves $O(1)$ regret with respect to $T$ if the exploration cost is zero when the load level is below a certain threshold. Last, based on both synthetic data and real-world traces, experimental results show that AdaUCB significantly outperforms other bandit algorithms, such as UCB and TS (Thompson Sampling), under large load/price fluctuations.
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