International audienceIn most current data modelling for time-dynamic systems, one works with a prespecified differential equation and attempts to estimate its parameters. In contrast, we demonstrate that in the case of functional data, the equation itself can be inferred. Assuming only that the dynamics are described by a first-order nonlinear differential equation with a random component, we obtain data-adaptive dynamic equations from the observed data via a simple smoothing-based procedure. We prove consistency and introduce diagnostics to ascertain the fraction of variance that is explained by the deterministic part of the equation. This approach is shown to yield useful insights into the time-dynamic nature of human growth
In this paper we consider the problem of estimating parameters in ordinary differential equations gi...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
Time dynamic systems can be used in many applications to data modeling. In the case of longitudinal ...
This text focuses on the use of smoothing methods for developing and estimating differential equatio...
In longitudinal studies, it is common to observe repeated measurements data from a sample of subject...
This dissertation studies the modeling of time series driven by unobservable processes using state s...
This book focuses on a central question in the field of complex systems: Given a fluctuating (in tim...
Dynamical systems theory is routinely applied to a mathematical model of a process rather than the p...
We introduce new Bayesian methodology for modeling functional and time series data. While broadly ap...
We demonstrate that the processes underlying on-line auction price bids and many other long...
In the study of biological, ecological, or environmental dynamical processes, many theoretical model...
This chapter is an account of the recent research that deals with curves observed consecutively over...
We introduce a simple and interpretable model for functional data analysis for situations where the ...
We introduce a simple and interpretable model for functional data analysis for situations where the ...
In this paper we consider the problem of estimating parameters in ordinary differential equations gi...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
Time dynamic systems can be used in many applications to data modeling. In the case of longitudinal ...
This text focuses on the use of smoothing methods for developing and estimating differential equatio...
In longitudinal studies, it is common to observe repeated measurements data from a sample of subject...
This dissertation studies the modeling of time series driven by unobservable processes using state s...
This book focuses on a central question in the field of complex systems: Given a fluctuating (in tim...
Dynamical systems theory is routinely applied to a mathematical model of a process rather than the p...
We introduce new Bayesian methodology for modeling functional and time series data. While broadly ap...
We demonstrate that the processes underlying on-line auction price bids and many other long...
In the study of biological, ecological, or environmental dynamical processes, many theoretical model...
This chapter is an account of the recent research that deals with curves observed consecutively over...
We introduce a simple and interpretable model for functional data analysis for situations where the ...
We introduce a simple and interpretable model for functional data analysis for situations where the ...
In this paper we consider the problem of estimating parameters in ordinary differential equations gi...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...