论文标题
链接流分析的频率结构方法
A Frequency-Structure Approach for Link Stream Analysis
论文作者
论文摘要
链接流是一组三胞胎$(t,u,v)$,表明$ u $和$ v $在时间$ t $相互作用。链接流对众多数据集建模及其适当的研究在许多应用中至关重要。在实践中,原始链接流通常被汇总或转换为做出决策的时间序列或图表。然而,尚不清楚原始链路流的动态和结构信息如何传递到变换的对象中。这项工作表明,可以通过代数线性图和信号运算符研究链路流来将链接流置于这个问题,为此,我们引入了一个新型的线性矩阵框架,以分析链接流。我们表明,由于它们的线性性,我们的框架可以轻松地采用信号处理中的大多数方法,以分析链接流的时间/频率信息。但是,线性图方法的可用性分析关系/结构信息是有限的。我们通过开发(i)图表的新基础来解决这一限制,该图可以使我们将它们分解为不同分辨率级别的结构; (ii)图表过滤器,使我们能够以受控的方式更改其结构信息。通过将这些开发项目及其时间域插入我们的框架中,我们能够(i)获得链接流的新基础,使我们能够在频率结构域中表示它们; (ii)表明,链接流的许多有趣的转换,例如相互作用的聚合或它们嵌入到欧几里得空间中,可以看作是我们频率结构域中的简单过滤器。
A link stream is a set of triplets $(t, u, v)$ indicating that $u$ and $v$ interacted at time $t$. Link streams model numerous datasets and their proper study is crucial in many applications. In practice, raw link streams are often aggregated or transformed into time series or graphs where decisions are made. Yet, it remains unclear how the dynamical and structural information of a raw link stream carries into the transformed object. This work shows that it is possible to shed light into this question by studying link streams via algebraically linear graph and signal operators, for which we introduce a novel linear matrix framework for the analysis of link streams. We show that, due to their linearity, most methods in signal processing can be easily adopted by our framework to analyze the time/frequency information of link streams. However, the availability of linear graph methods to analyze relational/structural information is limited. We address this limitation by developing (i) a new basis for graphs that allow us to decompose them into structures at different resolution levels; and (ii) filters for graphs that allow us to change their structural information in a controlled manner. By plugging-in these developments and their time-domain counterpart into our framework, we are able to (i) obtain a new basis for link streams that allow us to represent them in a frequency-structure domain; and (ii) show that many interesting transformations to link streams, like the aggregation of interactions or their embedding into a euclidean space, can be seen as simple filters in our frequency-structure domain.