Spatio-temporal modeling of the topology of swarm behavior with persistence landscapes

P. Corcoran, Christopher B. Jones
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引用次数: 10

Abstract

We propose a method for modeling the topology of swarm behavior in a manner which facilitates the application of machine learning techniques such as clustering. This is achieved by modeling the persistence of topological features, such as connected components and holes, of the swarm with respect to time using zig-zag persistent homology. The output of this model is subsequently transformed into a representation known as a persistence landscape. This representation forms a vector space and therefore facilitates the application of machine learning techniques. The proposed model is validated using a real data set corresponding to a swarm of 300 fish. We demonstrate that it may be used to perform clustering of swarm behavior with respect to topological features.
基于持续性景观的蜂群行为拓扑的时空建模
我们提出了一种方法,以一种便于应用机器学习技术(如聚类)的方式来建模群体行为的拓扑结构。这是通过使用锯齿形的持久同调来对集群的拓扑特征(如连接的组件和孔)的持久性进行建模来实现的。该模型的输出随后被转换为称为持久性景观的表示。这种表示形式形成了一个向量空间,因此便于机器学习技术的应用。利用300条鱼的真实数据集对模型进行了验证。我们证明,它可以用来执行群体行为的聚类相对于拓扑特征。
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