论文标题
基于Wasserstein距离的矢量空间中的拓扑分类
Topological Classification in a Wasserstein Distance Based Vector Space
论文作者
论文摘要
由于从现实世界网络中提取有意义的拓扑特征的计算挑战,基于拓扑的大型和致密网络的分类非常困难。在本文中,我们通过使用持续的同源性和最佳传输的原则性理论来定义拓扑特征的新颖矢量表示,从而提出了一种可计算方法来对网络进行拓扑分类的方法。所提出的矢量空间基于持久性条形码之间的Wasserstein距离。使用网络图的1个骨骼来获得代表连接组件和周期的1维持续条形码。这些条形码和相应的瓦斯坦距离可以非常有效地计算。使用支持向量机将所提出的向量空间的有效性证明,以对模拟网络进行分类和测量的功能性脑网络。
Classification of large and dense networks based on topology is very difficult due to the computational challenges of extracting meaningful topological features from real-world networks. In this paper we present a computationally tractable approach to topological classification of networks by using principled theory from persistent homology and optimal transport to define a novel vector representation for topological features. The proposed vector space is based on the Wasserstein distance between persistence barcodes. The 1-skeleton of the network graph is employed to obtain 1-dimensional persistence barcodes that represent connected components and cycles. These barcodes and the corresponding Wasserstein distance can be computed very efficiently. The effectiveness of the proposed vector space is demonstrated using support vector machines to classify simulated networks and measured functional brain networks.