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Temporally Evolving Community Detection and Prediction in Content-Centric Networks

机译:在以内容为中心的网络中的时间上不断发展的社区检测与预测

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In this work, we consider the problem of combining link, content and temporal analysis for community detection and prediction in evolving networks. Such temporal and content-rich networks occur in many real-life settings, such as bibliographic networks and question answering forums. Most of the work in the literature (that uses both content and structure) deals with static snapshots of networks, and they do not reflect the dynamic changes occurring over multiple snapshots. Incorporating dynamic changes in the communities into the analysis can also provide useful insights about the changes in the network such as the migration of authors across communities. In this work, we propose Chimera (https://github.com/renatolfc/chimera-stf), a shared factorization model that can simultaneously account for graph links, content, and temporal analysis. This approach works by extracting the latent semantic structure of the network in multidimensional form, but in a way that takes into account the temporal continuity of these embeddings. Such an approach simplifies temporal analysis of the underlying network by using the embedding as a surrogate. A consequence of this simplification is that it is also possible to use this temporal sequence of embeddings to predict future communities. We present experimental results illustrating the effectiveness of the approach. Code related to this paper is available at: https://github.com/renatolfc/chimera-stf.
机译:在这项工作中,我们考虑在不断发展的网络中组合社区检测和预测的链路,内容和时间分析的问题。这种时间和内容丰富的网络发生在许多现实生活中,例如书目网络和问题应答论坛。文献中的大多数工作(使用内容和结构)处理网络的静态快照,并且它们不会反映在多个快照上发生的动态变化。将社区的动态变化纳入分析,还可以为网络中的变化提供有用的见解,例如跨社区的作者迁移。在这项工作中,我们提出了Chimera(https://github.com/renatolfc/chimera -stf),这是一个共享的分解模型,可以同时考虑图表链接,内容和时间分析。这种方法通过以多维形式提取网络的潜在语义结构,但以考虑这些嵌入的时间连续性的方式。这种方法通过使用嵌入作为代理的嵌入来简化基础网络的时间分析。这种简化的结果是也可以使用这种嵌入的嵌入序列来预测未来的社区。我们呈现了说明该方法的有效性的实验结果。与本文相关的代码可用于:https://github.com/renatolfc/chimera -stf。

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