从全局状态网络中挖掘判别子图

Sayan Ranu, Minh X. Hoang, Ambuj K. Singh
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引用次数: 26

摘要

全局状态网络提供了一种强大的机制来模拟当前系统生成的数据中日益增加的异质性。该网络包括节点处具有动态局部状态的一系列网络快照,以及指示事件发生的全局网络状态。从全局状态网络中挖掘判别子图使我们能够识别对全局状态影响最大的有影响力的子网络,并揭示网络局部实体与其集体行为之间的复杂关系。在本文中,我们探讨了这个问题,并设计了一种称为MINDS的技术来从大型全局状态网络中挖掘最小判别子图。为了对抗指数子图搜索空间,我们提出了编辑映射的概念,并对其进行Metropolis Hastings采样来计算答案集。此外,我们提出了网络约束决策树的思想来学习遵循底层网络结构的预测模型。在真实数据集上进行的大量实验表明,该方法在预测质量方面具有优异的准确性。此外,MINDS的速度比基线技术至少提高了四个数量级。
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Mining discriminative subgraphs from global-state networks
Global-state networks provide a powerful mechanism to model the increasing heterogeneity in data generated by current systems. Such a network comprises of a series of network snapshots with dynamic local states at nodes, and a global network state indicating the occurrence of an event. Mining discriminative subgraphs from global-state networks allows us to identify the influential sub-networks that have maximum impact on the global state and unearth the complex relationships between the local entities of a network and their collective behavior. In this paper, we explore this problem and design a technique called MINDS to mine minimally discriminative subgraphs from large global-state networks. To combat the exponential subgraph search space, we derive the concept of an edit map and perform Metropolis Hastings sampling on it to compute the answer set. Furthermore, we formulate the idea of network-constrained decision trees to learn prediction models that adhere to the underlying network structure. Extensive experiments on real datasets demonstrate excellent accuracy in terms of prediction quality. Additionally, MINDS achieves a speed-up of at least four orders of magnitude over baseline techniques.
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