Agent-based models provide a flexible framework that is frequently used for modelling many biological systems, including cell migration, molecular dynamics, ecology, and epidemiology. Analysis of the model dynamics can be challenging due to their inherent stochasticity and heavy computational requirements. Common approaches to the analysis of agent-based models include extensive Monte Carlo simulation of the model or the derivation of coarse-grained differential equation models to predict the expected or averaged output from the agent-based model. Both of these approaches have limitations, however, as extensive computation of complex agent-based models may be infeasible, and coarse-grained differential equation models can fail to accurately...
When is it better to use agent based (AB) models, and when should differential equation (DE) models ...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
There is great potential to be explored regarding the use of agent-based modelling and simulation as...
Agent-based models provide a flexible framework that is frequently used for modelling many biologica...
When is it better to use agent-based (AB) models, and when should differential equation (DE) models ...
Equation learning aims to infer differential equation models from data. While a number of studies ha...
There is great potential to be explored regarding the use of agent-based modelling and simulation as...
There is great potential to be explored regarding the use of agent-based modelling and simulation as...
Many advances in research regarding immuno-interactions with cancer were developed with the help of ...
Modeling biological systems furthers our understanding of dynamic relationships and helps us make pr...
Modeling in ecology or epidemiology generally opposes two classes of models, Equation Based Models a...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
We propose a machine learning framework for the data-driven discovery of macroscopic chemotactic Par...
As microscopic (e.g. atomistic, stochastic, agent-based, particle-based) simulations become increasi...
We present an Equation/Variable free machine learning (EVFML) framework for the control of the colle...
When is it better to use agent based (AB) models, and when should differential equation (DE) models ...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
There is great potential to be explored regarding the use of agent-based modelling and simulation as...
Agent-based models provide a flexible framework that is frequently used for modelling many biologica...
When is it better to use agent-based (AB) models, and when should differential equation (DE) models ...
Equation learning aims to infer differential equation models from data. While a number of studies ha...
There is great potential to be explored regarding the use of agent-based modelling and simulation as...
There is great potential to be explored regarding the use of agent-based modelling and simulation as...
Many advances in research regarding immuno-interactions with cancer were developed with the help of ...
Modeling biological systems furthers our understanding of dynamic relationships and helps us make pr...
Modeling in ecology or epidemiology generally opposes two classes of models, Equation Based Models a...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
We propose a machine learning framework for the data-driven discovery of macroscopic chemotactic Par...
As microscopic (e.g. atomistic, stochastic, agent-based, particle-based) simulations become increasi...
We present an Equation/Variable free machine learning (EVFML) framework for the control of the colle...
When is it better to use agent based (AB) models, and when should differential equation (DE) models ...
End-to-end learning of dynamical systems with black-box models, such as neural ordinary differential...
There is great potential to be explored regarding the use of agent-based modelling and simulation as...