Networked bandits with disjoint linear payoffs

Meng Fang, D. Tao
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引用次数: 27

Abstract

In this paper, we study `networked bandits', a new bandit problem where a set of interrelated arms varies over time and, given the contextual information that selects one arm, invokes other correlated arms. This problem remains under-investigated, in spite of its applicability to many practical problems. For instance, in social networks, an arm can obtain payoffs from both the selected user and its relations since they often share the content through the network. We examine whether it is possible to obtain multiple payoffs from several correlated arms based on the relationships. In particular, we formalize the networked bandit problem and propose an algorithm that considers not only the selected arm, but also the relationships between arms. Our algorithm is `optimism in face of uncertainty' style, in that it decides an arm depending on integrated confidence sets constructed from historical data. We analyze the performance in simulation experiments and on two real-world offline datasets. The experimental results demonstrate our algorithm's effectiveness in the networked bandit setting.
具有不相交线性收益的网络强盗
在本文中,我们研究了“网络盗匪”,这是一个新的盗匪问题,其中一组相互关联的武器随着时间的推移而变化,并且给定选择一个武器的上下文信息,调用其他相关的武器。尽管这个问题适用于许多实际问题,但它仍未得到充分研究。例如,在社交网络中,手臂可以从被选择的用户及其关系中获得回报,因为他们经常通过网络共享内容。我们研究是否有可能从基于关系的几个相关臂中获得多个收益。特别是,我们形式化了网络强盗问题,并提出了一种不仅考虑所选武器,而且考虑武器之间关系的算法。我们的算法是“面对不确定性的乐观主义”风格,因为它根据从历史数据构建的集成置信度集来决定手臂。我们在仿真实验和两个真实的离线数据集上分析了性能。实验结果证明了该算法在网络强盗环境下的有效性。
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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