Contagion maps exploit activation times in threshold contagions to assign vectors in high-dimensional Euclidean space to the nodes of a network. A point cloud that is the image of a contagion map reflects both the structure underlying the network and the spreading behaviour of the contagion on it. Intuitively, such a point cloud exhibits features of the network's underlying structure if the contagion spreads along that structure, an observation which suggests contagion maps as a viable manifold-learning technique. We test contagion maps as a manifold-learning tool on a number of different real-world and synthetic data sets, and we compare their performance to that of Isomap, one of the most well-known manifold-learning algorithms. We find that, under certain conditions, contagion maps are able to reliably detect underlying manifold structure in noisy data, while Isomap fails due to noise-induced error. This consolidates contagion maps as a technique for manifold learning.
翻译:聚集图利用临界传染的激活时间将高维欧几里德空间的矢量分配到网络的节点上。 一个点云是传播图的图像,它反映了网络背后的结构及其上传染的传播行为。从直觉来看,这种点云显示网络基本结构的特征,如果传染在结构中扩散,这种观察显示传染图是一种可行的多学技术。我们测试传染图作为多种学习工具,用于不同的现实世界和合成数据集,并将其性能与最著名的多元学习算法Isomap的性能加以比较。我们发现,在某些条件下,传染图能够可靠地探测到噪音数据中的基本多重结构,而Isomap则由于噪音引起的错误而失败。这巩固了传染图作为多种学习的技术。