Over the past years, nonlinear dynamical models have significantly contributed to the general understanding of brain activity as well as brain disorders. Appropriately validated and optimized mathematical models can be used to mechanistically explain properties of brain structure and neuronal dynamics observed from neuroimaging data. A thorough exploration of the model parameter space and hypothesis testing with the methods of nonlinear dynamical systems and statistical physics can assist in classification and prediction of brain states. On the one hand, such a detailed investigation and systematic parameter variation are hardly feasible in experiments and data analysis. On the other hand, the model-based approach can establish a link betwe...
Although nonlinear dynamics have been mastered by physicists and mathematicians for a long time (as ...
An outstanding open problem in neuroscience is to understand how neural systems are capable of produ...
Modern approaches to investigation of complex brain dynamics suggest to represent the brain as a fun...
Over the past years, nonlinear dynamical models have significantly contributed to the general unders...
AbstractThis article reviews the substantial impact computational neuroscience has had on neuroimagi...
This book is intended for use in advanced graduate courses in statistics / machine learning, as well...
International audienceThe resting state dynamics of the brain shows robust features of spatiotempora...
This book focuses on our current understanding of brain dynamics in various brain disorders and how ...
Computational models have become an integral part of basic neuroscience and have facilitated some of...
Advances in the field of signal processing, nonlinear dynamics, statistics, and optimization theory,...
Functional neuroimaging has made fundamental contributions to our understanding of brain function. I...
The application of machine learning algorithms to neuroimaging data shows great promise for the clas...
Human behavior and cognitive function correlate with complex patterns of spatio-temporal brain dynam...
Computational modeling studies and explains neuronal behaviors by modeling their underlying dynamics...
DoctorNonlinear dynamics have also received much attention in recent years for the purpose of invest...
Although nonlinear dynamics have been mastered by physicists and mathematicians for a long time (as ...
An outstanding open problem in neuroscience is to understand how neural systems are capable of produ...
Modern approaches to investigation of complex brain dynamics suggest to represent the brain as a fun...
Over the past years, nonlinear dynamical models have significantly contributed to the general unders...
AbstractThis article reviews the substantial impact computational neuroscience has had on neuroimagi...
This book is intended for use in advanced graduate courses in statistics / machine learning, as well...
International audienceThe resting state dynamics of the brain shows robust features of spatiotempora...
This book focuses on our current understanding of brain dynamics in various brain disorders and how ...
Computational models have become an integral part of basic neuroscience and have facilitated some of...
Advances in the field of signal processing, nonlinear dynamics, statistics, and optimization theory,...
Functional neuroimaging has made fundamental contributions to our understanding of brain function. I...
The application of machine learning algorithms to neuroimaging data shows great promise for the clas...
Human behavior and cognitive function correlate with complex patterns of spatio-temporal brain dynam...
Computational modeling studies and explains neuronal behaviors by modeling their underlying dynamics...
DoctorNonlinear dynamics have also received much attention in recent years for the purpose of invest...
Although nonlinear dynamics have been mastered by physicists and mathematicians for a long time (as ...
An outstanding open problem in neuroscience is to understand how neural systems are capable of produ...
Modern approaches to investigation of complex brain dynamics suggest to represent the brain as a fun...