Iterative learning of graph connectivity from partially-observed cascade samples

Jiin Woo, Jungseul Ok, Yung Yi
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引用次数: 4

Abstract

Graph learning is an inference problem of estimating connectivity of a graph from a collection of epidemic cascades, with many useful applications in the areas of online/offline social networks, p2p networks, computer security, and epidemiology. We consider a practical scenario when the information of cascade samples are partially observed in the independent cascade (IC) model. For the graph learning problem, we propose an efficient algorithm that solves a localized version of computationally-intractable maximum likelihood estimation through approximations in both temporal and spatial aspects. Our algorithm iterates the operations of recovering missing time logs and inferring graph connectivity, and thereby progressively improves the inference quality. We study the sample complexity, which is the number of required cascade samples to meet a given inference quality, and show that it is asymptotically close to a lower bound, thus near-order-optimal in terms of the number of nodes. We evaluate the performance of our algorithm using five real-world social networks, whose size ranges from 20 to 900, and demonstrate that our algorithm performs better than other competing algorithms in terms of accuracy while maintaining fast running time.
部分观察级联样本图连通性的迭代学习
图学习是一个从一系列流行病级联中估计图的连通性的推理问题,在在线/离线社交网络、p2p网络、计算机安全和流行病学领域有许多有用的应用。我们考虑了在独立级联(IC)模型中部分观测到级联样本信息的实际情况。对于图学习问题,我们提出了一种有效的算法,该算法通过时间和空间方面的近似来解决计算上难以处理的最大似然估计的局部版本。我们的算法迭代恢复缺失时间日志和推断图连通性的操作,从而逐步提高推断质量。我们研究了样本复杂度,即满足给定推理质量所需的级联样本数量,并表明它是渐近接近下界的,因此就节点数量而言是近序最优的。我们使用五个真实世界的社交网络(其大小范围从20到900)来评估我们的算法的性能,并证明我们的算法在保持快速运行时间的同时,在准确性方面比其他竞争算法表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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