Point process generalized linear models (PP-GLMs) provide an important statistical framework for modeling spiking activity in single-neurons and neuronal networks. Stochastic stability is essential when sampling from these models, as done in computational neuroscience to analyze statistical properties of neuronal dynamics and in neuro-engineering to implement closed-loop applications. Here we show, however, that despite passing common goodness-of-fit tests, PP-GLMs estimated from data are often unstable, leading to divergent firing rates. The inclusion of absolute refractory periods is not a satisfactory solution since the activity then typically settles into unphysiological rates. To address these issues, we derive a framework for determin...
The macroscopic dynamics of large populations of neurons can be mathematically analyzed using low-di...
Running title: Stable, regularised models of population dynamics Ongoing advances in experimental te...
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynam...
Point process generalized linear models (PP-GLMs) provide an important statistical framework for mod...
<p>Stability of models estimated from physiological data is analyzed using the quasi-renewal approxi...
Understanding the factors shaping neuronal spiking is a central problem in neuroscience. Neurons may...
Experimental neuroscience increasingly requires tractable models for analyzing and predicting the be...
Variability in single neuron models is typically implemented either by a stochastic Leaky-Integrate-...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
Understanding how ensembles of neurons represent and transmit information in the patterns of their j...
Understanding how ensembles of neurons represent and transmit information in the patterns of their j...
Understanding a neuron's transfer function, which relates a neuron's inputs to its outputs, is essen...
<p><b>A</b>, Schematic overview of the point process generalized linear model (GLM). One model is fi...
The neural dynamics generating sensory, motor, and cognitive functions are commonly understood throu...
The brain is a very complex system in the strong sense. It features a huge amount of individual cell...
The macroscopic dynamics of large populations of neurons can be mathematically analyzed using low-di...
Running title: Stable, regularised models of population dynamics Ongoing advances in experimental te...
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynam...
Point process generalized linear models (PP-GLMs) provide an important statistical framework for mod...
<p>Stability of models estimated from physiological data is analyzed using the quasi-renewal approxi...
Understanding the factors shaping neuronal spiking is a central problem in neuroscience. Neurons may...
Experimental neuroscience increasingly requires tractable models for analyzing and predicting the be...
Variability in single neuron models is typically implemented either by a stochastic Leaky-Integrate-...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
Understanding how ensembles of neurons represent and transmit information in the patterns of their j...
Understanding how ensembles of neurons represent and transmit information in the patterns of their j...
Understanding a neuron's transfer function, which relates a neuron's inputs to its outputs, is essen...
<p><b>A</b>, Schematic overview of the point process generalized linear model (GLM). One model is fi...
The neural dynamics generating sensory, motor, and cognitive functions are commonly understood throu...
The brain is a very complex system in the strong sense. It features a huge amount of individual cell...
The macroscopic dynamics of large populations of neurons can be mathematically analyzed using low-di...
Running title: Stable, regularised models of population dynamics Ongoing advances in experimental te...
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynam...