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Counting motifs in dynamic networks

机译:在动态网络中计算主题

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Background: A network motif is a sub-network that occurs frequently in a given network. Detection of such motifs is important since they uncover functions and local properties of the given biological network. Finding motifs is however a computationally challenging task as it requires solving the costly subgraph isomorphism problem. Moreover, the topology of biological networks change over time. These changing networks are called dynamic biological networks. As the network evolves, frequency of each motif in the network also changes. Computing the frequency of a given motif from scratch in a dynamic network as the network topology evolves is infeasible, particularly for large and fast evolving networks.Results: In this article, we design and develop a scalable method for counting the number of motifs in a dynamic biological network. Our method incrementally updates the frequency of each motif as the underlying network's topology evolves. Our experiments demonstrate that our method can update the frequency of each motif in orders of magnitude faster than counting the motif embeddings every time the network changes. If the network evolves more frequently, the margin with which our method outperforms theexisting static methods, increases. Conclusions: We evaluated our method extensively using synthetic and real datasets, and show that our method is highly accurate(> 96%) and that it can be scaled to large dense networks. The results on real data demonstrate the utility of our method in revealing interesting insights on the evolution of biological processes.
机译:背景:网络图案是一个经常发生在给定网络中的子网。由于它们揭示给定生物网络的功能和局部属性,因此检测这种基板是重要的。然而,查找图案是一个计算上具有挑战性的任务,因为它需要解决昂贵的子目称表同构异构问题。此外,生物网络的拓扑随着时间的推移而变化。这些变化的网络称为动态生物网络。随着网络演变的,网络中每个主题的频率也会发生变化。从动态网络中计算给定图案的频率,因为网络拓扑演变是不可行的,特别是对于大而快速不断发展的网络。结果:在本文中,我们设计并开发可扩展方法,用于计算A中的图案数量动态生物网络。我们的方法随着底层网络的拓扑演变,逐步更新每个图案的频率。我们的实验表明,我们的方法可以在每次网络变化时比计算MOTIF嵌入的速度更快地更新每个主题的频率。如果网络更频繁地演变,我们的方法优于先进的静态方法的边际,增加。结论:我们通过合成和真实数据集进行了广泛的方法评估了我们的方法,并表明我们的方法高度准确(> 96%),并且它可以缩放到大密度网络。实际数据的结果展示了我们对揭示生物过程演变的有趣见解的效用。

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