Sparse graphical modelling has attained widespread attention across various academic fields. We propose two new graphical model approaches, Gslope and Tslope, which provide sparse estimates of the precision matrix by penalizing its sorted L1-norm, and relying on Gaussian and T-student data, respectively. We provide the selections of the tuning parameters which provably control the probability of including false edges between the disjoint graph components and empirically control the False Discovery Rate for the block diagonal covariance matrices. In extensive simulation and real world analysis, the new methods are compared to other state-of-the-art sparse graphical modelling approaches. The results establish Gslope and Tslope as two new effective tools for sparse network estimation, when dealing with both Gaussian, t-student and mixture data.
翻译:我们提出了两种新的图形模型方法,即Gslope和Tslope,它们通过惩罚分类的L1-norm和分别依靠Gaussian和Ts-student数据,对精确矩阵提供了稀少的估计。我们提供了调试参数的选择,这些参数可以明显地控制将不相干图形组件与对块二进制共变矩阵的虚假发现率进行实验性控制之间的误差。在广泛的模拟和现实世界分析中,新方法与其他最先进的稀有图形模型方法进行了比较。结果将Gslope和Tslope作为稀少网络估算的两个新的有效工具,用于处理高斯、t-student和混合数据。