Semi-Parametric Contextual Bandits with Graph-Laplacian Regularization

Y. Choi, Gi-Soo Kim, Seung-Jin Paik, M. Paik
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引用次数: 2

Abstract

Non-stationarity is ubiquitous in human behavior and addressing it in the contextual bandits is challenging. Several works have addressed the problem by investigating semi-parametric contextual bandits and warned that ignoring non-stationarity could harm performances. Another prevalent human behavior is social interaction which has become available in a form of a social network or graph structure. As a result, graph-based contextual bandits have received much attention. In this paper, we propose"SemiGraphTS,"a novel contextual Thompson-sampling algorithm for a graph-based semi-parametric reward model. Our algorithm is the first to be proposed in this setting. We derive an upper bound of the cumulative regret that can be expressed as a multiple of a factor depending on the graph structure and the order for the semi-parametric model without a graph. We evaluate the proposed and existing algorithms via simulation and real data example.
图-拉普拉斯正则化的半参数上下文强盗
非平稳性在人类行为中无处不在,在语境中解决它是一项挑战。一些作品通过调查半参数上下文强盗来解决这个问题,并警告忽视非平稳性可能会损害性能。另一种流行的人类行为是社交互动,它以社交网络或图表结构的形式出现。因此,基于图的上下文强盗受到了广泛关注。在本文中,我们提出了“SemiGraphTS”,这是一种新的基于图的半参数奖励模型的上下文汤普森采样算法。我们的算法是第一个在这种情况下提出的。对于无图的半参数模型,根据图的结构和阶数,导出了累积遗憾的上界,该上界可以表示为因子的倍数。通过仿真和实际数据实例对所提算法和现有算法进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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