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Dynamic Social Network Analysis using Latent Space Models

机译:使用潜在空间模型的动态社交网络分析

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This paper explores two aspects of social network modeling. First, we generalize a successful static model of relationships into a dynamic model that accounts for friendships drifting over time. Second, we show how to make it tractable to learn such models from data, even as the number of entities n gets large. The generalized model associates each entity with a point in p-dimensional Euclidian latent space. The points can move as time progresses but large moves in latent space are improbable. Observed links between entities are more likely if the entities are close in latent space. We show how to make such a model tractable (sub-quadratic in the number of entities) by the use of appropriate kernel functions for similarity in latent space; the use of low dimensional kd-trees; a new efficient dynamic adaptation of multidimensional scaling for a first pass of approximate projection of entities into latent space; and an efficient conjugate gradient update rule for non-linear local optimization in which amortized time per entity during an update is O(log n). We use both synthetic and real-world data on upto 11,000 entities which indicate linear scaling in computation time and improved performance over four alternative approaches. We also illustrate the system operating on twelve years of NIPS co-publication data. We present a detailed version of this work in [1].
机译:本文探讨了社交网络建模的两个方面。首先,我们将成功的静态关系模型归纳为动态模型,该模型说明了随着时间的流逝而产生的友谊。其次,我们展示了如何使从数据中学习此类模型变得容易处理,即使实体的数量n变大。广义模型将每个实体与p维Euclidian潜在空间中的一个点相关联。这些点可以随着时间的推移而移动,但是不可能在潜在空间中进行大的移动。如果实体在潜在空间中靠近,则实体之间观察到的链接更可能发生。我们展示了如何通过使用适当的内核函数来使这种模型易于处理(实体数量为二次方),以实现潜在空间中的相似性。使用低维kd树;多维缩放的一种新的有效动态适应,用于将实体近似投影到潜伏空间的第一遍;一种用于非线性局部优化的有效共轭梯度更新规则,其中更新期间每个实体的摊销时间为O(log n)。我们在多达11,000个实体上同时使用了合成数据和现实世界数据,这些数据表明了计算时间的线性缩放和四种替代方法的改进性能。我们还将说明在十二年的NIPS联合发布数据上运行的系统。我们在[1]中提供这项工作的详细版本。

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