Ordinary differential equations (ODEs) are widely used to characterize the dynamics of complex systems in real applications. In this article, we propose a novel joint estimation approach for generalized sparse additive ODEs where observations are allowed to be non-Gaussian. The new method is unified with existing collocation methods by considering the likelihood, ODE fidelity and sparse regularization simultaneously. We design a block coordinate descent algorithm for optimizing the non-convex and non-differentiable objective function. The global convergence of the algorithm is established. The simulation study and two applications demonstrate the superior performance of the proposed method in estimation and improved performance of identifying the sparse structure.
翻译:普通差分方程式(ODEs)被广泛用于描述复杂系统在实际应用中的动态特征。在本条中,我们提议对允许观测为非Gausian的通用稀释添加数式代码进行新的联合估计,新方法与现有的合用方法统一,同时考虑可能性、ODE忠贞度和稀疏的正规化。我们设计了一组协调的世系算法,以优化非凝固和不可区分的客观功能。算法的全球趋同已经确立。模拟研究和两种应用表明,拟议的方法在估计和改进确定稀有结构的绩效方面表现优异。