Adaptive networks have the capability to pursue solutions of global stochastic optimization problems by relying only on local interactions within neighborhoods. The diffusion of information through repeated interactions allows for globally optimal behavior, without the need for central coordination. Most existing strategies are developed for cooperative learning settings, where the objective of the network is common to all agents. We consider in this work a team setting, where a subset of the agents form a team with a common goal while competing with the remainder of the network. We develop an algorithm for decentralized competition among teams of adaptive agents, analyze its dynamics and present an application in the decentralized training of generative adversarial neural networks.
翻译:适应性网络有能力通过只依靠社区内的地方互动,寻求解决全球随机优化问题的办法; 通过反复互动传播信息,可以采取全球最佳行为,而无需进行中央协调; 多数现有战略是为合作学习环境制定的,而网络的目标是所有代理人的共同目标; 我们考虑在这项工作中,一个团队设置,其中一部分代理人组成一个具有共同目标的团队,同时与网络的其余部分竞争; 我们为适应性代理团队之间的分散竞争制定一种算法,分析其动态,并在对基因对抗神经网络的分散化培训中提出应用。