Abstract—Networks of controlled dynamical systems exhibit a variety of interconnection patterns that could be interpreted as the structure of the system. One such interpretation of system structure is a system’s signal structure, characterized as the open-loop causal dependencies among manifest variables and represented by its dynamical structure function. Although this notion of structure is among the weakest available, previous work has shown that if no a priori structural information is known about the system, not even the Boolean structure of the dynamical structure function is identifiable. Consequently, one method previously suggested for obtaining the necessary a priori structural information is to leverage knowledge about target spe...
Chemical reaction networks describe interactions between biochemical species. Once an underlying rea...
Abstract: Dynamic modelling is a powerful tool for studying biological networks. Reachability (contr...
Reconstructed models of biochemical networks often reflect the high level of complexity inherent in ...
peer reviewedNetworks of controlled dynamical systems exhibit a variety of interconnection patterns ...
Networks of controlled dynamical systems exhibit a variety of interconnection patterns that could be...
Networks of controlled dynamical systems exhibit a variety of interconnection patterns that could be...
peer reviewedNetwork reconstruction, i.e. obtaining network structure from input-output information,...
Network reconstruction, i.e. obtaining network structure from input-output information, is a central...
Abstract — Network reconstruction, i.e. obtaining network structure from input-output information, i...
In this paper we consider the problem of network reconstruction, with applications to biochemical re...
Network reconstruction, i.e., obtaining network structure from data, is a central theme in systems b...
peer reviewedNetwork reconstruction, i.e., obtaining network structure from data, is a central theme...
Motivated by the fact that transfer functions do not contain structural information about networks, ...
This paper formulates and solves the network reconstruction problem for linear time-invariant system...
Chemical reaction networks describe interactions between biochemical species. Once an underlying rea...
Chemical reaction networks describe interactions between biochemical species. Once an underlying rea...
Abstract: Dynamic modelling is a powerful tool for studying biological networks. Reachability (contr...
Reconstructed models of biochemical networks often reflect the high level of complexity inherent in ...
peer reviewedNetworks of controlled dynamical systems exhibit a variety of interconnection patterns ...
Networks of controlled dynamical systems exhibit a variety of interconnection patterns that could be...
Networks of controlled dynamical systems exhibit a variety of interconnection patterns that could be...
peer reviewedNetwork reconstruction, i.e. obtaining network structure from input-output information,...
Network reconstruction, i.e. obtaining network structure from input-output information, is a central...
Abstract — Network reconstruction, i.e. obtaining network structure from input-output information, i...
In this paper we consider the problem of network reconstruction, with applications to biochemical re...
Network reconstruction, i.e., obtaining network structure from data, is a central theme in systems b...
peer reviewedNetwork reconstruction, i.e., obtaining network structure from data, is a central theme...
Motivated by the fact that transfer functions do not contain structural information about networks, ...
This paper formulates and solves the network reconstruction problem for linear time-invariant system...
Chemical reaction networks describe interactions between biochemical species. Once an underlying rea...
Chemical reaction networks describe interactions between biochemical species. Once an underlying rea...
Abstract: Dynamic modelling is a powerful tool for studying biological networks. Reachability (contr...
Reconstructed models of biochemical networks often reflect the high level of complexity inherent in ...