Strategic interactions between a group of individuals or organisations can be modelled as games played on networks, where a player's payoff depends not only on their actions but also on those of their neighbours. Inferring the network structure from observed game outcomes (equilibrium actions) is an important problem with numerous potential applications in economics and social sciences. Existing methods mostly require the knowledge of the utility function associated with the game, which is often unrealistic to obtain in real-world scenarios. We adopt a transformer-like architecture which correctly accounts for the symmetries of the problem and learns a mapping from the equilibrium actions to the network structure of the game without explicit knowledge of the utility function. We test our method on three different types of network games using both synthetic and real-world data, and demonstrate its effectiveness in network structure inference and superior performance over existing methods.
翻译:一组个人或组织之间的战略互动可以仿照网络上的游戏,玩家的回报不仅取决于他们的行动,也取决于他们的邻居的行动。从观察到的游戏结果(均衡行动)推断网络结构是一个重要问题,在经济和社会科学方面有许多潜在应用。现有方法主要需要了解与游戏有关的实用功能,而这种知识在现实世界中往往不现实。我们采用了一种类似变压器的结构,它正确说明问题的对称性,并学习从均衡行动到游戏网络结构的图谱,而没有清楚了解实用功能。我们用合成数据和现实世界数据对三种不同类型的网络游戏进行测试,并展示其在网络结构推理和优于现有方法方面的效力。