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Emergence of conventions through social learning: Heterogeneous learners in complex networks

机译:通过社会学习形成惯例:复杂网络中的异构学习者

摘要

Societal norms or conventions help identify one of many appropriate behaviors during an interaction between agents. The offline study of norms is an active research area where one can reason about normative systems and include research on designing and enforcing appropriate norms at specification time. In our work, we consider the problem of the emergence of conventions in a society through distributed adaptation by agents from their online experiences at run time. The agents are connected to each other within a fixed network topology and interact over time only with their neighbours in the network. Agents recognize a social situation involving two agents that must choose one available action from multiple ones. No default behavior is specified. We study the emergence of system-wide conventions via the process of social learning where an agent learns to choose one of several available behaviors by interacting repeatedly with randomly chosen neighbors without considering the identity of the interacting agent in any particular interaction. While multiagent learning literature has primarily focused on developing learning mechanisms that produce desired behavior when two agents repeatedly interact with each other, relatively little work exists in understanding and characterizing the dynamics and emergence of conventions through social learning. We experimentally show that social learning always produces conventions for random, fully connected and ring networks and study the effect of population size, number of behavior options, different learning algorithms for behavior adoption, and influence of fixed agents on the speed of convention emergence. We also observe and explain the formation of stable, distinct subconventions and hence the lack of emergence of a global convention when agents are connected in a scale-free network. © 2013 The Author(s).
机译:社会规范或惯例有助于在代理之间的交互过程中识别许多适当的行为之一。离线规范研究是一个活跃的研究领域,可以在其中研究规范系统,并包括在规范时设计和执行适当规范的研究。在我们的工作中,我们通过代理在运行时从在线体验中进行分布式适应来考虑社会中出现惯例的问题。代理在固定网络拓扑中相互连接,并且仅随时间与网络中的邻居交互。代理人认识到涉及两个代理人的社会状况,他们必须从多个代理人中选择一个可用的动作。没有指定默认行为。我们通过社交学习过程研究了系统范围内约定的出现,在该过程中,代理通过与随机选择的邻居反复交互来学习从几种可用行为中选择一种,而无需在任何特定的交互中考虑交互代理的身份。尽管多主体学习文献主要集中在开发一种学习机制,当两种主体反复互动时,这些机制会产生所需的行为,而通过社会学习来理解和刻画惯例的动态和出现,则工作相对较少。我们通过实验表明,社会学习总是为随机,完全连接和环形网络生成约定,并研究人口规模,行为选择数量,行为采用的不同学习算法以及固定代理对约定出现速度的影响。我们还观察并解释了稳定的,独特的子惯例的形成,因此当在无规模网络中连接代理时,缺乏全球惯例的出现。 ©2013作者。

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