Learning the differential statistical dependency network between two contexts is essential for many real-life applications, mostly in the high dimensional low sample regime. In this paper, we propose a novel differential network estimator that allows integrating various sources of knowledge beyond data samples. The proposed estimator is scalable to a large number of variables and achieves a sharp asymptotic convergence rate. Empirical experiments on extensive simulated data and four real-world applications (one on neuroimaging and three from functional genomics) show that our approach achieves improved differential network estimation and provides better supports to downstream tasks like classification. Our results highlight significant benefits of integrating group, spatial and anatomic knowledge during differential genetic network identification and brain connectome change discovery.
翻译:学习两种情况之间的统计依赖网络差异对于许多实际应用至关重要,主要是在高维低样本系统中。在本文中,我们提议建立一个新的差异网络估计器,将数据样本以外的各种知识来源结合起来。拟议的估计器可推广到大量变量,并达到惊人的无症状融合率。关于广泛模拟数据和四个真实世界应用(一个是神经成像,三个是功能基因组学)的经验实验表明,我们的方法改进了差异网络估计,为下游任务提供了更好的支持。我们的结果突出表明了在不同的基因网络识别和大脑连接变化发现过程中整合群体、空间和解剖学知识的巨大好处。