Distributed Thompson Sampling Under Constrained Communication

IF 2 Q2 AUTOMATION & CONTROL SYSTEMS IEEE Control Systems Letters Pub Date : 2025-01-02 DOI:10.1109/LCSYS.2024.3525096
Saba Zerefa;Zhaolin Ren;Haitong Ma;Na Li
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Abstract

In Bayesian optimization, a black-box function is maximized via the use of a surrogate model. We apply distributed Thompson sampling, using a Gaussian process as a surrogate model, to approach the multi-agent Bayesian optimization problem. In our distributed Thompson sampling implementation, each agent receives sampled points from neighbors, where the communication network is encoded in a graph; each agent utilizes their own Gaussian process to model the objective function. We demonstrate theoretical bounds on Bayesian average regret and Bayesian simple regret, where the bound depends on the structure of the communication graph. Unlike in batch Bayesian optimization, this bound is applicable in cases where the communication graph amongst agents is constrained. When compared to sequential single-agent Thompson sampling, our bound guarantees faster convergence with respect to time as long as the communication graph is connected. We confirm the efficacy of our algorithm with numerical simulations on traditional optimization test functions, demonstrating the significance of graph connectivity on improving regret convergence.
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受限通信条件下的分布式汤普森采样
在贝叶斯优化中,通过使用代理模型来最大化黑盒函数。我们应用分布式汤普森抽样,使用高斯过程作为代理模型,来处理多智能体贝叶斯优化问题。在我们的分布式汤普森采样实现中,每个代理从邻居那里接收采样点,其中通信网络被编码成一个图;每个智能体利用自己的高斯过程来建模目标函数。我们证明了贝叶斯平均后悔和贝叶斯简单后悔的理论边界,其中边界取决于通信图的结构。与批处理贝叶斯优化不同,这个边界适用于代理之间的通信图受到约束的情况。与顺序单代理汤普森采样相比,只要通信图是连接的,我们的边界就保证了更快的时间收敛。通过对传统优化测试函数的数值模拟,验证了算法的有效性,证明了图连通性对改进后悔收敛的重要性。
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来源期刊
IEEE Control Systems Letters
IEEE Control Systems Letters Mathematics-Control and Optimization
CiteScore
4.40
自引率
13.30%
发文量
471
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