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A Reinforcement Learning Approach to Strategic Belief Revelation with Social Influence

机译:一种与社会影响力的战略信仰启示兴奋学的加固学习方法

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The study of social networks has increased rapidly in the past few decades. Of recent interest are the dynamics of changing opinions over a network. Some research has investigated how interpersonal influence can affect opinion change, how to maximize/minimize the spread of opinion change over a network, and recently, if/how agents can act strategically to effect some outcome in the network's opinion distribution. This latter problem can be modeled and addressed as a reinforcement learning problem; we introduce an approach to help network agents find strategies that outperform hand-crafted policies. Our preliminary results show that our approach is promising in networks with dynamic topologies.
机译:在过去的几十年里,社交网络的研究已经迅速增加。 最近的兴趣是改变网络的发病的动态。 一些研究已经调查了人际交往如何影响意见变化,如何最大化/最大限度地减少网络的意见变化传播,最近,如果/如何战略性地策略性地在网络的意见分布中实现一些结果。 后一种问题可以被建模和解决作为加强学习问题; 我们介绍了一种帮助网络代理商发现优于手工制作政策的策略的方法。 我们的初步结果表明,我们的方法在具有动态拓扑的网络中承诺。

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