We consider network topology identification subject to a signal smoothness prior on the nodal observations. A fast dual-based proximal gradient algorithm is developed to efficiently tackle a strongly convex, smoothness-regularized network inverse problem known to yield high-quality graph solutions. Unlike existing solvers, the novel iterations come with global convergence rate guarantees and do not require additional step-size tuning. Reproducible simulated tests demonstrate the effectiveness of the proposed method in accurately recovering random and real-world graphs, markedly faster than state-of-the-art alternatives and without incurring an extra computational burden.
翻译:我们认为网络地形识别取决于节点观测之前的信号平稳度。 开发了一个快速的双基近似梯度算法,以高效地解决一个已知可产生高质量图形解决方案的强烈相近、平稳、正规化的网络逆向问题。 与现有的解决方案不同,新的迭代具有全球趋同率保障,不需要额外的分级调整。 可复制的模拟测试表明拟议方法在准确恢复随机和真实世界图形方面的有效性,明显快于最先进的替代方法,而且不会带来额外的计算负担。