Large-scale neural simulations have the marks of a distinct methodology which can be fruitfully deployed in neuroscience. I distinguish two types of applications of the simulation methodology in neuroscientific research. Model-oriented applications aim to use the simulation outputs to derive new hypotheses about brain organization and functioning and thus to extend current theoretical knowledge and understanding in the field. Data-oriented applications of the simulation methodology target the collection and analysis of data relevant for neuroscientific research that is inaccessible via more traditional experimental methods. I argue for a two-stage evaluation schema which helps clarify the differences and similarities between three current l...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
Many scientific systems are studied using computer codes that simulate the phenomena of interest. Co...
Modern computational neuroscience strives to develop complex network models to explain dynamics and ...
Modeling work in neuroscience can be classified using two different criteria. The first one is the c...
A key element of the European Union’s Human Brain Project (HBP) and other large-scale brain research...
Modeling work in neuroscience can be classified using two different criteria. The first one is the c...
In recent years, a number of research projects have been proposed whose goal is to build large-scale...
Our knowledge of the brain has evolved over millennia in philosophical, experimental and theoretical...
Despite the impressive amount of financial resources invested in carrying out large-scale brain simu...
Investigation in neurophysiology usually involves measurements of large population average signals o...
Technological advances in experimental neuroscience are generating vast quantities of data, from the...
This thesis consists of three parts related to the in silico study of the brain: technologies for la...
Large-scale simulations of neuronal networks provide a unique view onto brain dynamics, complementin...
Despite the impressive amount of financial resources recently invested in carrying out large-scale b...
Taufer, MichelaOne significant challenge in neuroscience is understanding the cooperative behavior o...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
Many scientific systems are studied using computer codes that simulate the phenomena of interest. Co...
Modern computational neuroscience strives to develop complex network models to explain dynamics and ...
Modeling work in neuroscience can be classified using two different criteria. The first one is the c...
A key element of the European Union’s Human Brain Project (HBP) and other large-scale brain research...
Modeling work in neuroscience can be classified using two different criteria. The first one is the c...
In recent years, a number of research projects have been proposed whose goal is to build large-scale...
Our knowledge of the brain has evolved over millennia in philosophical, experimental and theoretical...
Despite the impressive amount of financial resources invested in carrying out large-scale brain simu...
Investigation in neurophysiology usually involves measurements of large population average signals o...
Technological advances in experimental neuroscience are generating vast quantities of data, from the...
This thesis consists of three parts related to the in silico study of the brain: technologies for la...
Large-scale simulations of neuronal networks provide a unique view onto brain dynamics, complementin...
Despite the impressive amount of financial resources recently invested in carrying out large-scale b...
Taufer, MichelaOne significant challenge in neuroscience is understanding the cooperative behavior o...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
Many scientific systems are studied using computer codes that simulate the phenomena of interest. Co...
Modern computational neuroscience strives to develop complex network models to explain dynamics and ...