渐进式社会学习应用于分散决策机制:集体学习更快

M. M. D. Oca, T. Stützle, M. Birattari, M. Dorigo
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引用次数: 6

摘要

积极反馈和建立共识程序是自组织决策机制的关键要素,该机制允许一群代理集体决定两个行动中哪一个执行速度最快。这种机制可以被看作是一种集体学习算法,因为即使个体代理不直接比较可用的替代方案,总体也能够选择执行所需时间较少的行动,从而潜在地提高系统的效率。但是,当涉及大量人口时,就现有选择之一达成协商一致意见所需的时间可能使这种决策机制不切实际。在本文中,我们通过应用增量社会学习方法来解决这个问题,该方法由不断增长的人口规模与社会学习机制相结合组成。实验结果表明,采用渐进式社会学习方法可以大大加快集体学习过程。本文描述了这是正确的条件。
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Incremental Social Learning Applied to a Decentralized Decision-Making Mechanism: Collective Learning Made Faster
Positive feedback and a consensus-building procedure are the key elements of a self-organized decision-making mechanism that allows a population of agents to collectively determine which of two actions is the fastest to execute. Such a mechanism can be seen as a collective learning algorithm because even though individual agents do not directly compare the available alternatives, the population is able to select the action that takes less time to perform, thus potentially improving the efficiency of the system. However, when a large population is involved, the time required to reach consensus on one of the available choices may render impractical such a decision-making mechanism. In this paper, we tackle this problem by applying the incremental social learning approach, which consists of a growing population size coupled with a social learning mechanism. The obtained experimental results show that by using the incremental social learning approach, the collective learning process can be accelerated substantially. The conditions under which this is true are described.
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