稀疏超图上多代理汤普森采样的有限时间频数后悔约束

Tianyuan Jin, Hao-Lun Hsu, William Chang, Pan Xu
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摘要

我们研究的是多代理多臂强盗(MAMAB)问题,其中 $m$ 代理被分解成 $\rho$ 重叠组。每个组代表一个超边,在代理上形成一个超图。在每一轮互动中,学习者都会根据超图结构拉出一个联合臂(由每个代理的单个臂组成),并接收到向前的信息。具体来说,我们假设每个超图都有一个局部奖励,而联合臂的奖励就是这些局部奖励的总和。之前的工作引入了多代理汤普森采样(MATS)算法,并得出了贝叶斯后悔约束。然而,如何在这种多代理环境下为汤普森采样推导出一个频繁后悔约束仍然是一个未决问题。为了解决这些问题,我们提出了一种高效的 MATS 变种--$\epsilon$-exploring 多代理汤普森采样($\epsilon$-MATS)算法,它以概率 $\epsilon$ 执行 MATS 探索,反之则采用同意策略。我们证明,$\epsilon$-MATS 实现了最坏情况下的频繁后悔约束,该约束在时间跨度和局部臂大小上都是亚线性的。我们还推导出了这种情况下的下限,这意味着当超图足够稀疏时,我们的频繁后悔上限在常数和对数项以内都是最优的。在标准 MAMAB 问题上的彻底实验证明,与相同设置下的现有算法相比,$epsilon$-MATS 的性能更优,计算效率更高。
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Finite-Time Frequentist Regret Bounds of Multi-Agent Thompson Sampling on Sparse Hypergraphs
We study the multi-agent multi-armed bandit (MAMAB) problem, where $m$ agents are factored into $\rho$ overlapping groups. Each group represents a hyperedge, forming a hypergraph over the agents. At each round of interaction, the learner pulls a joint arm (composed of individual arms for each agent) and receives a reward according to the hypergraph structure. Specifically, we assume there is a local reward for each hyperedge, and the reward of the joint arm is the sum of these local rewards. Previous work introduced the multi-agent Thompson sampling (MATS) algorithm \citep{verstraeten2020multiagent} and derived a Bayesian regret bound. However, it remains an open problem how to derive a frequentist regret bound for Thompson sampling in this multi-agent setting. To address these issues, we propose an efficient variant of MATS, the $\epsilon$-exploring Multi-Agent Thompson Sampling ($\epsilon$-MATS) algorithm, which performs MATS exploration with probability $\epsilon$ while adopts a greedy policy otherwise. We prove that $\epsilon$-MATS achieves a worst-case frequentist regret bound that is sublinear in both the time horizon and the local arm size. We also derive a lower bound for this setting, which implies our frequentist regret upper bound is optimal up to constant and logarithm terms, when the hypergraph is sufficiently sparse. Thorough experiments on standard MAMAB problems demonstrate the superior performance and the improved computational efficiency of $\epsilon$-MATS compared with existing algorithms in the same setting.
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