论文标题
有关定向无环图和POSET的因果傅里叶分析
Causal Fourier Analysis on Directed Acyclic Graphs and Posets
论文作者
论文摘要
我们提出了一种新型的傅立叶分析和相关信号处理概念的新形式,该信号(或数据)由边缘加权定向的无环图(DAGS)索引。这意味着我们的傅立叶基础产生了我们定义的适当的转移和卷积操作员概念的特征。 DAG是捕获数据值之间因果关系的常见模型,在这种情况下,我们提出的傅立叶分析将数据与我们定义的线性假设下的原因相关联。傅立叶变换的定义需要加权dag的及时闭合,根据边缘权重的解释,可能会有几种形式。示例包括影响水平,距离或污染分布。我们的框架与先前的GSP不同:它特定于DAG和杠杆,并扩展了Moebius反转的经典理论。对于原型应用程序,我们考虑DAGS建模动态网络,其中边缘会随着时间而变化。具体而言,我们对从现实世界接触数据获得的这种DAG上的感染扩散进行建模,并从样品中学习感染信号,假设傅立叶域中的稀疏性。
We present a novel form of Fourier analysis, and associated signal processing concepts, for signals (or data) indexed by edge-weighted directed acyclic graphs (DAGs). This means that our Fourier basis yields an eigendecomposition of a suitable notion of shift and convolution operators that we define. DAGs are the common model to capture causal relationships between data values and in this case our proposed Fourier analysis relates data with its causes under a linearity assumption that we define. The definition of the Fourier transform requires the transitive closure of the weighted DAG for which several forms are possible depending on the interpretation of the edge weights. Examples include level of influence, distance, or pollution distribution. Our framework is different from prior GSP: it is specific to DAGs and leverages, and extends, the classical theory of Moebius inversion from combinatorics. For a prototypical application we consider DAGs modeling dynamic networks in which edges change over time. Specifically, we model the spread of an infection on such a DAG obtained from real-world contact tracing data and learn the infection signal from samples assuming sparsity in the Fourier domain.