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Efficiently Estimating Motif Statistics of Large Networks

机译:有效估计大型网络的主题统计

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Exploring statistics of locally connected subgraph patterns (also known as network motifs) has helped researchers better understand the structure and function of biological and Online Social Networks (OSNs). Nowadays, the massive size of some critical networks-often stored in already overloaded relational databases-effectively limits the rate at which nodes and edges can be explored, making it a challenge to accurately discover subgraph statistics. In this work, we propose sampling methods to accurately estimate subgraph statistics from as few queried nodes as possible. We present sampling algorithms that efficiently and accurately estimate subgraph properties of massive networks. Our algorithms require no precomputation or complete network topology information. At the same time, we provide theoretical guarantees of convergence. We perform experiments using widely known datasets and show that, for the same accuracy, our algorithms require an order of magnitude less queries (samples) than the current state-of-the-art algorithms.
机译:探索局部连接的子图模式(也称为网络主题)的统计数据有助于研究人员更好地了解生物和在线社交网络(OSN)的结构和功能。如今,某些关键网络的庞大规模(通常存储在已经超载的关系数据库中)有效地限制了探索节点和边缘的速度,这对准确发现子图统计数据构成了挑战。在这项工作中,我们提出了采样方法,以从尽可能少的查询节点中准确估计子图统计信息。我们提出了采样算法,可以高效,准确地估算大规模网络的子图属性。我们的算法不需要预先计算或完整的网络拓扑信息。同时,我们提供了收敛的理论保证。我们使用广为人知的数据集进行实验,结果表明,对于相同的准确性,我们的算法所需要的查询(样本)比当前的最新算法少一个数量级。

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