In this paper, we study a hypothesis test to determine the underlying directed graph structure of nodes in a network, where the nodes represent random processes and the direction of the links indicate a causal relationship between said processes. Specifically, a k-th order Markov structure is considered for them, and the chosen metric to determine a connection between nodes is the directed information. The hypothesis test is based on the empirically calculated transition probabilities which are used to estimate the directed information. For a single edge, it is proven that the detection probability can be chosen arbitrarily close to one, while the false alarm probability remains negligible. When the test is performed on the whole graph, we derive bounds for the false alarm and detection probabilities, which show that the test is asymptotically optimal by properly setting the threshold test and using a large number of samples. Furthermore, we study how the convergence of the measures relies on the existence of links in the true graph.
翻译:在本文中,我们研究一个假设测试,以确定网络中节点的基本定向图形结构,节点代表随机过程,而链接的方向则表明上述过程之间的因果关系。具体地说,考虑一个 k-th 顺序 Markov 结构,而确定节点之间关联的选定衡量标准是直接信息。假设测试基于经验计算得出的过渡概率,用于估计定向信息。对于单一边缘,可以证明探测概率可以任意选择接近于一个网络,而虚假警报概率则微不足道。当对整个图进行测试时,我们得出虚假警报和探测概率的界限,这表明通过正确设定临界测试和使用大量样本,测试是同样最佳的。此外,我们研究测量措施的趋同如何依赖于真实图表中存在链接。