Network inference has been extensively studied in several fields, such as systems biology and social sciences. Learning network topology and internal dynamics is essential to understand mechanisms of complex systems. In particular, sparse topologies and stable dynamics are fundamental features of many real-world continuous-time (CT) networks. Given that usually only a partial set of nodes are able to observe, in this paper, we consider linear CT systems to depict networks since they can model unmeasured nodes via transfer functions. Additionally, measurements tend to be noisy and with low and varying sampling frequencies. For this reason, we consider CT models since discrete-time approximations often require fine-grained measurements and uniform sampling steps. The developed method applies dynamical structure functions (DSFs) derived from linear stochastic differential equations (SDEs) to describe networks of measured nodes. A numerical sampling method, preconditioned Crank-Nicolson (pCN), is used to refine coarse-grained trajectories to improve inference accuracy. The convergence property of the developed method is robust to the dimension of data sources. Monte Carlo simulations indicate that the developed method outperforms state-of-the-art methods including group sparse Bayesian learning (GSBL), BINGO, kernel-based methods, dynGENIE3, GENIE3, and ARNI. The simulations include random and ring networks, and a synthetic biological network. These are challenging networks, suggesting that the developed method can be applied under a wide range of contexts, such as gene regulatory networks, social networks, and communication systems.
翻译:在许多领域,如系统生物学和社会科学,对网络进行了广泛的研究; 学习网络地形学和内部动态学对于理解复杂系统的机制至关重要; 特别是,分散的地形学和稳定的动态学是许多实际世界连续时间(CT)网络的基本特征; 鉴于通常只有部分的节点能够观测,本文认为线性CT系统可以描述网络,因为它们可以通过传输功能模拟非测量节点; 此外,测量往往很吵闹,取样频率低且不同; 为此,我们认为CT模型, 因为离散时间近似往往需要精细的测量和统一的取样步骤; 开发的方法应用了线性随机偏差等分等分方(DSFs)的动态结构功能(DSFs)来描述测量节点网络的网络。 使用数字抽样方法,以Crank-Nicolson(p CN)为先决条件, 用于改进以粗度为基的节点的交错轨道, 因而精确度。 为此,我们考虑进化方法的趋近性特性对于数据源具有很强的特性; 蒙特卡洛·卡罗基尔网络, 学习了一种方法。