In this thesis, we provide contributions to the modeling, analysis and design of networked dynamical systems from a data-driven perspective. Our approach is grounded on the integration of concepts and tools from graph theory, control theory, optimization and statistics. In particular, we develop methodologies that can be applied to challenging, high-dimensional problems where only partial or summarized information about the structure and function of a complex system is available. We validate our methods across different application domains, most remarkably with large-scale neuroimaging datasets that follow state-of-the-art acquisition techniques and span multiple individuals and experimental paradigms. Structurally, the contributions of thi...
Human brain activity as measured by fMRI exhibits strong correlations between brain regions which ar...
Complex systems in which a population of dynamic units interact with each other are prevalent in nat...
The emerging area of complex networks has led to a paradigm shift in neuroscience. Connectomes estim...
In this thesis, we provide contributions to the modeling, analysis and design of networked dynamical...
In this thesis, we provide contributions to the modeling, analysis and design of networked dynamical...
This paper considers the identification of large directed graphs for resting-state brain networks ba...
The communicability between topologically associated brain regions may provide a globally connected ...
Modeling the behavior of coupled networks is challenging due to their intricate dynamics. For exampl...
Complex systems are increasingly studied as dynamical systems unfolding on complex networks, althoug...
Thesis (Ph.D.)--University of Washington, 2016-08Machine learning has become part of our daily lives...
Recent advances in brain imaging techniques, measurement approaches, and storage capacities have pro...
The relationship between structure and function in the human brain is well established, but not yet ...
Functional magnetic resonance imaging (fMRI) is one of the most popular non-invasive neuroimaging te...
Recent advances in brain imaging techniques, measurement approaches, and storage capacities have pro...
This study combines modeling of neuronal activity and networks derived from neuroimaging data in ord...
Human brain activity as measured by fMRI exhibits strong correlations between brain regions which ar...
Complex systems in which a population of dynamic units interact with each other are prevalent in nat...
The emerging area of complex networks has led to a paradigm shift in neuroscience. Connectomes estim...
In this thesis, we provide contributions to the modeling, analysis and design of networked dynamical...
In this thesis, we provide contributions to the modeling, analysis and design of networked dynamical...
This paper considers the identification of large directed graphs for resting-state brain networks ba...
The communicability between topologically associated brain regions may provide a globally connected ...
Modeling the behavior of coupled networks is challenging due to their intricate dynamics. For exampl...
Complex systems are increasingly studied as dynamical systems unfolding on complex networks, althoug...
Thesis (Ph.D.)--University of Washington, 2016-08Machine learning has become part of our daily lives...
Recent advances in brain imaging techniques, measurement approaches, and storage capacities have pro...
The relationship between structure and function in the human brain is well established, but not yet ...
Functional magnetic resonance imaging (fMRI) is one of the most popular non-invasive neuroimaging te...
Recent advances in brain imaging techniques, measurement approaches, and storage capacities have pro...
This study combines modeling of neuronal activity and networks derived from neuroimaging data in ord...
Human brain activity as measured by fMRI exhibits strong correlations between brain regions which ar...
Complex systems in which a population of dynamic units interact with each other are prevalent in nat...
The emerging area of complex networks has led to a paradigm shift in neuroscience. Connectomes estim...