TY - JOUR
T1 - Diagnostic Sparse Connectivity Networks With Regularization Template
AU - Qu, Yue
AU - Liu, Chuanren
AU - Zhang, Kai
AU - Xiao, Keli
AU - Jin, Bo
AU - Xiong, Hui
N1 - Publisher Copyright:
© 1989-2012 IEEE.
PY - 2023/1/1
Y1 - 2023/1/1
N2 - Real-world dynamic systems and complex objects are often monitored with multivariate time series where each dimension represents a system signal. Performing accurate diagnostic for a group of dynamic systems while simultaneously taking into account their similarities/distinctions, is a non-trivial task. In this paper, we develop an adaptive regularization approach to learning sparse connectivity structures in complex dynamic systems. The learned connectivity networks shed lights on the structural compositions of the system and hence can serve as highly informative inputs for various machine learning tasks. In particular, we focus on high-dimensional and semi-supervised learning scenarios and present a joint learning method to recover system-wise connectivity patterns by adaptively constructing a shared, sparsity-inducing regularization template across all systems. The shared template can be intuitively interpreted and used as a modeling template for efficient analysis of new systems. Moreover, our approach can flexibly incorporate information such as must-links and cannot-links for constructing regularization templates. Overall, our approach, named sparse adaptive regularization (SAR), can extract structure-related connectivity features efficiently and effectively, and result in significant improvements for machine learning tasks in dynamic systems. We benchmark our approach against the state-of-the-art methods with real-world data. Our results demonstrate the superiority of our approach over the baselines in terms of accuracy, efficiency, and interpretability.
AB - Real-world dynamic systems and complex objects are often monitored with multivariate time series where each dimension represents a system signal. Performing accurate diagnostic for a group of dynamic systems while simultaneously taking into account their similarities/distinctions, is a non-trivial task. In this paper, we develop an adaptive regularization approach to learning sparse connectivity structures in complex dynamic systems. The learned connectivity networks shed lights on the structural compositions of the system and hence can serve as highly informative inputs for various machine learning tasks. In particular, we focus on high-dimensional and semi-supervised learning scenarios and present a joint learning method to recover system-wise connectivity patterns by adaptively constructing a shared, sparsity-inducing regularization template across all systems. The shared template can be intuitively interpreted and used as a modeling template for efficient analysis of new systems. Moreover, our approach can flexibly incorporate information such as must-links and cannot-links for constructing regularization templates. Overall, our approach, named sparse adaptive regularization (SAR), can extract structure-related connectivity features efficiently and effectively, and result in significant improvements for machine learning tasks in dynamic systems. We benchmark our approach against the state-of-the-art methods with real-world data. Our results demonstrate the superiority of our approach over the baselines in terms of accuracy, efficiency, and interpretability.
KW - Dynamic system
KW - adaptive LASSO
KW - shared regularization
KW - sparse network
UR - https://www.scopus.com/pages/publications/85105097759
U2 - 10.1109/TKDE.2021.3075668
DO - 10.1109/TKDE.2021.3075668
M3 - 文章
AN - SCOPUS:85105097759
SN - 1041-4347
VL - 35
SP - 307
EP - 320
JO - IEEE Transactions on Knowledge and Data Engineering
JF - IEEE Transactions on Knowledge and Data Engineering
IS - 1
ER -