We present a methodology for efficient, robust determination of the interaction topology of networked dynamical systems using time series data collected from experiments, under the assumption that these networks are sparse, i.e., have much less edges than the full graph with the same vertex set. To achieve this, we minimize the 1-norm of the decision variables while keeping the data in close Euler fit, thus putting more emphasis on determining the interconnection pattern rather than the closeness of fit. First, we consider a networked system in which the interconnection strength enters in an affine way in the system dynamics. We demonstrate the ability of our method to identify a network structure through numerical examples. Second, we exte...
This chapter demonstrates how linear systems can be used to model biochemical networks. Such models ...
Abstract. In this study we will focus on piecewise linear state space models for gene-protein intera...
Large coupled networks of individual entities arise in multiple contexts in nature and engineered sy...
We present a methodology for efficient, robust determination of the interaction topology of networke...
Abstract—We present a methodology for efficient, robust determination of the interaction topology of...
We present a methodology for efficient, robust determination of the interaction topology of networke...
Background: Determining the interaction topology of biological systems is a topic that currently at...
Background Determining the interaction topology of biological systems is a topic that currently att...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
Abstract—We present a methodology for robust determina-tion of chemical reaction network interconnec...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
This chapter demonstrates how linear systems can be used to model biochemical networks. Such models ...
Abstract. In this study we will focus on piecewise linear state space models for gene-protein intera...
Large coupled networks of individual entities arise in multiple contexts in nature and engineered sy...
We present a methodology for efficient, robust determination of the interaction topology of networke...
Abstract—We present a methodology for efficient, robust determination of the interaction topology of...
We present a methodology for efficient, robust determination of the interaction topology of networke...
Background: Determining the interaction topology of biological systems is a topic that currently at...
Background Determining the interaction topology of biological systems is a topic that currently att...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
Abstract—We present a methodology for robust determina-tion of chemical reaction network interconnec...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
This chapter demonstrates how linear systems can be used to model biochemical networks. Such models ...
Abstract. In this study we will focus on piecewise linear state space models for gene-protein intera...
Large coupled networks of individual entities arise in multiple contexts in nature and engineered sy...