Poster Presentation from Nineteenth Annual Computational Neuroscience Meeting: CNS*2010 San Antonio, TX, USA. 24-30 July 2010 Statistical models of neural activity are at the core of the field of modern computational neuroscience. The activity of single neurons has been modeled to successfully explain dependencies of neural dynamics to its own spiking history, to external stimuli or other covariates [1]. Recently, there has been a growing interest in modeling spiking activity of a population of simultaneously recorded neurons to study the effects of correlations and functional connectivity on neural information processing (existing models include generalized linear models [2,3] or maximum-entropy approaches [4]). For point-process-based mod...
Advances in multi-unit recordings pave the way for statistical modeling of activity patterns in larg...
The spiking of activity of neurons throughout the cortex is random and complicated. This complicated...
After an elementary derivation of the “time transformation”, mapping a counting process onto a homog...
Poster Presentation from Nineteenth Annual Computational Neuroscience Meeting: CNS*2010 San Antonio,...
Statistical models of neural activity are integral to modern neuroscience. Recently interest has gro...
The coordinated, collective spiking activity of neuronal populations encodes and processes informati...
Statistical models of neural activity are integral to modern neuroscience. Recently interest has gro...
A critical component of any statistical modeling procedure is the ability to assess the goodness-of-...
One approach for understanding the encoding of information by spike trains is to fit statistical mod...
One approach for understanding the encoding of information by spike trains is to fit statistical mod...
A key goal of neuroscience is to understand how the remarkable computational abilities of our brain ...
Our understanding of neural population coding has been limited by a lack of analysis methods to char...
I present a theoretical effort to develop tools and statistical analysis of neural responses to repe...
Large-scale neural recording methods now allow us to observe large populations of identified single ...
In order to understand how neural systems perform computations and process sensory information, we n...
Advances in multi-unit recordings pave the way for statistical modeling of activity patterns in larg...
The spiking of activity of neurons throughout the cortex is random and complicated. This complicated...
After an elementary derivation of the “time transformation”, mapping a counting process onto a homog...
Poster Presentation from Nineteenth Annual Computational Neuroscience Meeting: CNS*2010 San Antonio,...
Statistical models of neural activity are integral to modern neuroscience. Recently interest has gro...
The coordinated, collective spiking activity of neuronal populations encodes and processes informati...
Statistical models of neural activity are integral to modern neuroscience. Recently interest has gro...
A critical component of any statistical modeling procedure is the ability to assess the goodness-of-...
One approach for understanding the encoding of information by spike trains is to fit statistical mod...
One approach for understanding the encoding of information by spike trains is to fit statistical mod...
A key goal of neuroscience is to understand how the remarkable computational abilities of our brain ...
Our understanding of neural population coding has been limited by a lack of analysis methods to char...
I present a theoretical effort to develop tools and statistical analysis of neural responses to repe...
Large-scale neural recording methods now allow us to observe large populations of identified single ...
In order to understand how neural systems perform computations and process sensory information, we n...
Advances in multi-unit recordings pave the way for statistical modeling of activity patterns in larg...
The spiking of activity of neurons throughout the cortex is random and complicated. This complicated...
After an elementary derivation of the “time transformation”, mapping a counting process onto a homog...