Computational neuroscience relies on simulations of neural network models to bridge the gap between the theory of neural networks and the experimentally observed activity dynamics in the brain. The rigorous validation of simulation results against reference data is thus an indispensable part of any simulation workflow. Moreover, the availability of different simulation environments and levels of model description require also validation of model implementations against each other to evaluate their equivalence. Despite rapid advances in the formalized description of models, data, and analysis workflows, there is no accepted consensus regarding the terminology and practical implementation of validation workflows in the context of neural simul...
A major challenge in experimental data analysis is the validation of analytical methods in a fully c...
Computational neuroscience, a relatively recent field, has gained fast ground and modelling is now w...
The exponential increase in available neural data has combined with the exponential growth in comput...
Computational neuroscience relies on simulations of neural network models to bridge the gap between ...
Modern neuroscience relies on simulations of neural network models to bridge the gap between the exp...
To bridge the gap between the theory of neuronal networks and findings obtained by the analysis of e...
The reproduction and replication of scientific results is an indispensable aspect of good scientific...
Neuroscience as an evolving field is in the quite rare situation that the amount of models and theor...
The reproduction and replication of scientific results is an indispensable aspect of good scientific...
BrainTC-127Modeling and the simulation of the activity in neuronal networks is an essential part of ...
The possibility to replicate and reproduce published research results is one of the biggest challeng...
The ultimate goal of Computational Neuroscience is the development of models with high predictive po...
We tackle the problem of validating simulation models using neural networks. We propose a neural-net...
Modeling and simulation in computational neuroscience is currently a research enterprise to better u...
Simulations are a powerful tool to explore the design space of hardware systems, offering the flexib...
A major challenge in experimental data analysis is the validation of analytical methods in a fully c...
Computational neuroscience, a relatively recent field, has gained fast ground and modelling is now w...
The exponential increase in available neural data has combined with the exponential growth in comput...
Computational neuroscience relies on simulations of neural network models to bridge the gap between ...
Modern neuroscience relies on simulations of neural network models to bridge the gap between the exp...
To bridge the gap between the theory of neuronal networks and findings obtained by the analysis of e...
The reproduction and replication of scientific results is an indispensable aspect of good scientific...
Neuroscience as an evolving field is in the quite rare situation that the amount of models and theor...
The reproduction and replication of scientific results is an indispensable aspect of good scientific...
BrainTC-127Modeling and the simulation of the activity in neuronal networks is an essential part of ...
The possibility to replicate and reproduce published research results is one of the biggest challeng...
The ultimate goal of Computational Neuroscience is the development of models with high predictive po...
We tackle the problem of validating simulation models using neural networks. We propose a neural-net...
Modeling and simulation in computational neuroscience is currently a research enterprise to better u...
Simulations are a powerful tool to explore the design space of hardware systems, offering the flexib...
A major challenge in experimental data analysis is the validation of analytical methods in a fully c...
Computational neuroscience, a relatively recent field, has gained fast ground and modelling is now w...
The exponential increase in available neural data has combined with the exponential growth in comput...