Puneet Jain, Chaitanya Dwivedi, Vigynesh Bhatt, Nick Smith, Michael A Goodrich
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引用次数: 0
Abstract
A hub-based colony consists of multiple agents who share a common nest site
called the hub. Agents perform tasks away from the hub like foraging for food
or gathering information about future nest sites. Modeling hub-based colonies
is challenging because the size of the collective state space grows rapidly as
the number of agents grows. This paper presents a graph-based representation of
the colony that can be combined with graph-based encoders to create
low-dimensional representations of collective state that can scale to many
agents for a best-of-N colony problem. We demonstrate how the information in
the low-dimensional embedding can be used with two experiments. First, we show
how the information in the tensor can be used to cluster collective states by
the probability of choosing the best site for a very small problem. Second, we
show how structured collective trajectories emerge when a graph encoder is used
to learn the low-dimensional embedding, and these trajectories have information
that can be used to predict swarm performance.
基于集线器的蚁群由多个代理组成,它们共享一个共同的巢穴(称为集线器)。代理在远离中心的地方执行任务,如觅食或收集有关未来巢址的信息。对基于集线器的蚁群进行建模具有挑战性,因为随着代理数量的增加,集体状态空间的大小也会迅速增长。本文介绍了一种基于图的蚁群表示法,它可以与基于图的编码器相结合,创建集体状态的低维表示法,这种表示法可以扩展到 N 种最佳蚁群问题中的多个代理。我们通过两个实验展示了如何利用低维嵌入信息。首先,我们展示了如何利用张量中的信息,按照在一个很小的问题中选择最佳地点的概率,对集体状态进行聚类。其次,我们展示了当使用图编码器学习低维嵌入时,结构化的集体轨迹是如何出现的,这些轨迹中的信息可用于预测蜂群的表现。