Yu Wenchao, Aggarwal Charu C, Wang Wei
University of California, Los Angeles, CA, USA.
IBM T.J. Watson Research Center, Yorktown, NY, USA.
Proc Int Conf Web Search Data Min. 2017 Feb;2017:455-464. doi: 10.1145/3018661.3018669.
The problem of evolutionary network analysis has gained increasing attention in recent years, because of an increasing number of networks, which are encountered in temporal settings. For example, social networks, communication networks, and information networks continuously evolve over time, and it is desirable to learn interesting trends about how the network structure evolves over time, and in terms of other interesting trends. One challenging aspect of networks is that they are inherently resistant to parametric modeling, which allows us to truly express the edges in the network as functions of time. This is because, unlike multidimensional data, the edges in the network reflect interactions among nodes, and it is difficult to independently model the edge as a function of time, without taking into account its correlations and interactions with neighboring edges. Fortunately, we show that it is indeed possible to achieve this goal with the use of a matrix factorization, in which the entries are parameterized by time. This approach allows us to represent the edge structure of the network purely as a function of time, and predict the evolution of the network over time. This opens the possibility of using the approach for a wide variety of temporal network analysis problems, such as predicting future trends in structures, predicting links, and node-centric anomaly/event detection. This flexibility is because of the general way in which the approach allows us to express the structure of the network as a function of time. We present a number of experimental results on a number of temporal data sets showing the effectiveness of the approach.
近年来,进化网络分析问题受到了越来越多的关注,这是因为在时间环境中遇到的网络数量不断增加。例如,社交网络、通信网络和信息网络会随着时间不断演变,人们希望了解网络结构如何随时间演变以及其他有趣的趋势。网络的一个具有挑战性的方面是它们天生就抗拒参数建模,而参数建模能让我们将网络中的边真正表示为时间的函数。这是因为与多维数据不同,网络中的边反映了节点之间的相互作用,并且在不考虑其与相邻边的相关性和相互作用的情况下,很难将边独立建模为时间的函数。幸运的是,我们表明使用矩阵分解确实可以实现这一目标,其中矩阵元素由时间参数化。这种方法使我们能够将网络的边结构纯粹表示为时间的函数,并预测网络随时间的演变。这为将该方法用于各种时间网络分析问题开辟了可能性,例如预测结构的未来趋势、预测链接以及以节点为中心的异常/事件检测。这种灵活性源于该方法允许我们以一般方式将网络结构表示为时间的函数。我们在多个时间数据集上展示了一些实验结果,以证明该方法的有效性。