The problem of effective equations is reviewed and discussed. Starting from the classical Langevin equation, we show how it can be generalized to Hamiltonian systems with non-standard kinetic terms. A numerical method for inferring effective equations from data is discussed; this protocol allows to check the validity of our results. In addition we show that, with a suitable treatment of time series, such protocol can be used to infer effective models from experimental data. We briefly discuss the practical and conceptual difficulties of a pure data-driven approach in the building of models
This thesis is concerned with methodologies for the accurate quantitative modelling of molecular bio...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
A general approach to nonlinear stochastic equations with white noise is proposed. It consists of a ...
A general approach to nonlinear stochastic equations with white noise is proposed. It consists of a ...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
The goal of Science is to understand phenomena and systems in order to predict their development and...
The goal of Science is to understand phenomena and systems in order to predict their development and...
The modeling and simulation of high-dimensional multiscale systems is a critical challenge across a...
The dynamics of many-body complex processes is a challenge that many scientists from various fields...
In the framework of the problem of finding proper reaction coordinates (RCs) for complex systems and...
In this thesis, we shall discuss the Langevin equation. While the equation is well known in Statisti...
Summarization: The analysis of space-time data from complex, real-life phenomena requires the use of...
This thesis is concerned with methodologies for the accurate quantitative modelling of molecular bio...
This thesis is concerned with methodologies for the accurate quantitative modelling of molecular bio...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
A general approach to nonlinear stochastic equations with white noise is proposed. It consists of a ...
A general approach to nonlinear stochastic equations with white noise is proposed. It consists of a ...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
The goal of Science is to understand phenomena and systems in order to predict their development and...
The goal of Science is to understand phenomena and systems in order to predict their development and...
The modeling and simulation of high-dimensional multiscale systems is a critical challenge across a...
The dynamics of many-body complex processes is a challenge that many scientists from various fields...
In the framework of the problem of finding proper reaction coordinates (RCs) for complex systems and...
In this thesis, we shall discuss the Langevin equation. While the equation is well known in Statisti...
Summarization: The analysis of space-time data from complex, real-life phenomena requires the use of...
This thesis is concerned with methodologies for the accurate quantitative modelling of molecular bio...
This thesis is concerned with methodologies for the accurate quantitative modelling of molecular bio...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...