This article was supported by the German Research Foundation (DFG) and the Open Access Publication Fund of Humboldt-Universität zu Berlin.Modeling complex systems with large numbers of degrees of freedom has become a grand challenge over the past decades. In many situations, only a few variables are actually observed in terms of measured time series, while the majority of variables—which potentially interact with the observed ones—remain hidden. A typical approach is then to focus on the comparably few observed, macroscopic variables, assuming that they determine the key dynamics of the system, while the remaining ones are represented by noise. This naturally leads to an approximate, inverse modeling of such systems in terms of stochastic d...
Many natural phenomena are governed by forces on multiple spatial and temporal scales. Yet, it is of...
One of the major challenges in the field of nonlin-ear time series analysis is the development of su...
Most real world situations involve modelling of physical processes that evolve with time and space, ...
Modeling complex systems with large numbers of degrees of freedom has become a grand challenge over ...
Die Modellierung komplexer Systeme mit einer großen Anzahl von Freiheitsgraden ist in den letzten Ja...
Providing efficient and accurate parameterizations for model reduction is a key goal in many areas o...
This book focuses on a central question in the field of complex systems: Given a fluctuating (in tim...
AbstractThis paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
Many complex systems occurring in various application share the property that the underlying Markov ...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
We consider the problem of deriving approximate autonomous dynamics for a number of variables of a d...
Continuous-time Markov chains have long served as exemplary low-level models for an array of system...
Within this chapter, a practical introduction to a nonlinear analysis framework tailored for time-se...
Many natural phenomena are governed by forces on multiple spatial and temporal scales. Yet, it is of...
One of the major challenges in the field of nonlin-ear time series analysis is the development of su...
Most real world situations involve modelling of physical processes that evolve with time and space, ...
Modeling complex systems with large numbers of degrees of freedom has become a grand challenge over ...
Die Modellierung komplexer Systeme mit einer großen Anzahl von Freiheitsgraden ist in den letzten Ja...
Providing efficient and accurate parameterizations for model reduction is a key goal in many areas o...
This book focuses on a central question in the field of complex systems: Given a fluctuating (in tim...
AbstractThis paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
Many complex systems occurring in various application share the property that the underlying Markov ...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
We consider the problem of deriving approximate autonomous dynamics for a number of variables of a d...
Continuous-time Markov chains have long served as exemplary low-level models for an array of system...
Within this chapter, a practical introduction to a nonlinear analysis framework tailored for time-se...
Many natural phenomena are governed by forces on multiple spatial and temporal scales. Yet, it is of...
One of the major challenges in the field of nonlin-ear time series analysis is the development of su...
Most real world situations involve modelling of physical processes that evolve with time and space, ...