Aalto University School of Science , PO Box 15400, FI-00076 Aalto , Finland.
J R Soc Interface. 2019 Jul 26;16(156):20180814. doi: 10.1098/rsif.2018.0814. Epub 2019 Jul 10.
As a step towards studying human-agent collectives, we conduct an online game with human participants cooperating on a network. The game is presented in the context of achieving group formation through local coordination. The players set initially to a small-world network with limited information on the location of other players, coordinate their movements to arrange themselves into groups. To understand the decision-making process, we construct a data-driven model of agents based on probability matching. The model allows us to gather insight into the nature and degree of rationality employed by the human players. By varying the parameters in agent-based simulations, we are able to benchmark the human behaviour. We observe that while the players use the neighbourhood information in limited capacity, the perception of risk is optimal. We also find that for certain parameter ranges, the agents are able to act more efficiently when compared to the human players. This approach would allow us to simulate the collective dynamics in games with agents having varying strategies playing alongside human proxies.
为了研究人类与代理人间的集体行为,我们让人类参与者在网络上合作玩一个在线游戏。该游戏的背景是通过局部协调来实现团队形成。玩家最初被分配到一个小世界网络中,他们对其他玩家的位置信息了解有限,通过协调自己的动作来分组。为了理解决策过程,我们基于概率匹配构建了一个代理的数据分析模型。该模型使我们能够深入了解人类玩家所采用的理性的本质和程度。通过在基于代理的模拟中改变参数,我们能够对人类行为进行基准测试。我们观察到,尽管玩家在有限的范围内利用了邻里信息,但对风险的感知是最优的。我们还发现,对于某些参数范围,与人类玩家相比,代理能够更有效地行动。这种方法将使我们能够模拟具有不同策略的代理和人类代理一起玩的游戏中的集体动态。