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A Reinforcement Learning Approach to Gaining Social Capital with Partial Observation

机译:利用部分观察获得社会资本的加强学习方法

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Social capital brings individuals benefits and advantages in societies. In this paper, we formalize two types of social capital: bonding capital refers to links to neighbours, while bridging capital refers to brokerages between others. We ask the questions: How would a marginal individual gain social capital with imperfect information of the society? We formalize this issue as the partially observable network building problem and propose two reinforcement learning algorithms: one guarantees the convergence to optimal values in theory, while the other is efficient in practice. We conduct simulations over a real-world dataset, and experimental results coincide with our theoretical analysis.
机译:社会资本为社会带来个人的利益和优势。在本文中,我们正规化两种类型的社会资本:债券资本是指与邻居的联系,而桥接资本是指其他人之间的经纪人。我们问问题:边际个人如何利用社会的不完美信息获得社会资本?我们将此问题正式化为部分可观察的网络建筑问题,并提出了两种加强学习算法:一种保证理论上的最佳价值的收敛性,而另一个是在实践中有效。我们通过真实世界数据集进行模拟,实验结果与我们的理论分析一致。

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