Robust and Efficient Network Reconstruction in Complex System via Adaptive Signal Lasso
Lei Shi, Jie Hu, Libin Jin, Chen Shen, Huaiyu Tan, Dalei Yu

TL;DR
This paper introduces an adaptive signal lasso method for accurate and efficient network reconstruction in complex systems, overcoming limitations of previous methods by effectively classifying connection signals with fewer observations and less computational cost.
Contribution
The paper proposes an adaptive signal lasso technique that improves network topology estimation accuracy, handles both sparse and dense signals, and simplifies tuning parameter selection.
Findings
High accuracy in network topology recovery
Robust performance with noisy data
Reduced computational complexity
Abstract
Network reconstruction is important to the understanding and control of collective dynamics in complex systems. Most real networks exhibit sparsely connected properties, and the connection parameter is a signal (0 or 1). Well-known shrinkage methods such as lasso or compressed sensing (CS) to recover structures of complex networks cannot suitably reveal such a property; therefore, the signal lasso method was proposed recently to solve the network reconstruction problem and was found to outperform lasso and CS methods. However, signal lasso suffers the problem that the estimated coefficients that fall between 0 and 1 cannot be successfully selected to the correct class. We propose a new method, adaptive signal lasso, to estimate the signal parameter and uncover the topology of complex networks with a small number of observations. The proposed method has three advantages: (1) It can…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Gene Regulatory Network Analysis · Complex Network Analysis Techniques
