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Classification in biological networks with hypergraphlet kernels

机译:使用超图内核的生物网络分类

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Motivation: Biological and cellular systems are often modeled as graphs in which vertices represent objects of interest (genes, proteins and drugs) and edges represent relational ties between these objects (binds-to, interacts-with and regulates). This approach has been highly successful owing to the theory, methodology and software that support analysis and learning on graphs. Graphs, however, suffer from information loss when modeling physical systems due to their inability to accurately represent multiobject relationships. Hypergraphs, a generalization of graphs, provide a framework to mitigate information loss and unify disparate graph-based methodologies.
机译:动机:生物和细胞系统通常被建模为图形,其中顶点表示感兴趣的对象(基因、蛋白质和药物),边表示这些对象之间的关系(结合、相互作用和调节)。由于支持图形分析和学习的理论、方法和软件,这种方法非常成功。然而,图形在为物理系统建模时会因无法准确表示多对象关系而遭受信息损失。超图是图的一种泛化,它提供了一个框架来减少信息丢失,并统一基于图的不同方法。

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