首页 /研究 /Maximum Likelihood Estimation of Dynamic Sub-Networks with Missing Data
OTHER

Maximum Likelihood Estimation of Dynamic Sub-Networks with Missing Data

João Victor Galvão da Mata, Anders Hansson, Martin S. Andersen

发表年份
2025
访问权限
开放获取

摘要

Maximum likelihood estimation is effective for identifying dynamical systems, but applying it to large networks becomes computationally prohibitive. This paper introduces a maximum likelihood estimation method that enables identification of sub-networks within complex interconnected systems without estimating the entire network. The key insight is that under specific topological conditions, a sub-network's parameters can be estimated using only local measurements: signals within the target sub-network and those in the directly connected to the so-called separator sub-network. This approach significantly reduces computational complexity while enhancing privacy by eliminating the need to share sensitive internal data across organizational boundaries. We establish theoretical conditions for network separability, derive the probability density function for the sub-network, and demonstrate the method's effectiveness through numerical examples.

关键词

eess.SY

相关论文

查看 OTHER 分类全部论文