论文标题
部分可观测时空混沌系统的无模型预测
High-order Line Graphs of Non-uniform Hypergraphs: Algorithms, Applications, and Experimental Analysis
论文作者
论文摘要
HyperGraphs为许多应用程序提供了灵活而健壮的数据表示,但是直接在HyperGraphs上起作用的方法不容易获得,并且往往昂贵。当前对超图的大部分分析都依赖于首先执行图形扩展 - 基于节点(集合扩展)或边缘(线图),然后在结果代表图上运行标准图分析。但是,这种方法遭受了巨大的空间复杂性和高计算成本,而超图尺寸的增加。在这里,我们提出有效的并行算法,以加速并减少高级图形膨胀的记忆足迹。我们的结果集中在基于边缘的$ S $线图扩展上,但是我们为高阶集团扩展而开发的方法也是如此。据我们所知,我们的第一个框架是对单个共享存储器上大型数据集进行超图光谱分析的第一个框架。我们的方法可以从以前基于图扩展的模型无法提供的许多域中对数据集进行分析。所提出的$ S $线图计算算法比最先进的一般矩阵矩阵乘法方法快的顺序,并且比先前的基于hearuristic the Artristic of $ 5-31 {\ times} $加速获得了大约$ 5-31 {\ times} $速度。
Hypergraphs offer flexible and robust data representations for many applications, but methods that work directly on hypergraphs are not readily available and tend to be prohibitively expensive. Much of the current analysis of hypergraphs relies on first performing a graph expansion -- either based on the nodes (clique expansion), or on the edges (line graph) -- and then running standard graph analytics on the resulting representative graph. However, this approach suffers from massive space complexity and high computational cost with increasing hypergraph size. Here, we present efficient, parallel algorithms to accelerate and reduce the memory footprint of higher-order graph expansions of hypergraphs. Our results focus on the edge-based $s$-line graph expansion, but the methods we develop work for higher-order clique expansions as well. To the best of our knowledge, ours is the first framework to enable hypergraph spectral analysis of a large dataset on a single shared-memory machine. Our methods enable the analysis of datasets from many domains that previous graph-expansion-based models are unable to provide. The proposed $s$-line graph computation algorithms are orders of magnitude faster than state-of-the-art sparse general matrix-matrix multiplication methods, and obtain approximately $5-31{\times}$ speedup over a prior state-of-the-art heuristic-based algorithm for $s$-line graph computation.