Estimating the connectivity of a network from events observed at each node has many applications. One prominent example is found in neuroscience, where spike trains (sequences of action potentials) are observed at each neuron, but the way in which these neurons are connected is unknown. This paper introduces a novel method for estimating connections between nodes using a similarity measure between sequences of event times. Specifically, a normalized positive definite kernel defined on spike trains was used. The proposed method was evaluated using synthetic and real data, by comparing with methods using transfer entropy and the Victor-Purpura distance. Synthetic data was generated using CERM (Coupled Escape-Rate Model), a model that generate...
Analysing correlations between streams of events is an important problem. It arises for example in N...
Analysis of functional connectivity of simultaneously recorded multiple spike trains is one of the m...
International audienceThis paper aims at estimating causal relationships between signals to detect f...
This dissertation deals with modeling and analysis of multi-neuronal spike train data. Brain tissue ...
Identifying the structure and dynamics of synaptic interactions between neurons is the first step to...
Analytical and experimental methods are provided for estimating synaptic connectivities from simulta...
Signal processing Modern technology is allowing researchers tocollect data from neural ensembles wit...
<div><p>Identifying the structure and dynamics of synaptic interactions between neurons is the first...
One major challenge in neuroscience is the identification of interrelations between signals reflecti...
Background: Statistical models that predict neuron spike occurrence from the earlier spiking activit...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
State-of-the-art techniques allow researchers to record large numbers of spike trains in parallel fo...
Analytical and experimental methods are provided for estimating synaptic connectivities from simulta...
We address the problem of estimating the effective connectivity of the brain network, using the inpu...
Analysing correlations between streams of events is an important problem. It arises for example in N...
Analysis of functional connectivity of simultaneously recorded multiple spike trains is one of the m...
International audienceThis paper aims at estimating causal relationships between signals to detect f...
This dissertation deals with modeling and analysis of multi-neuronal spike train data. Brain tissue ...
Identifying the structure and dynamics of synaptic interactions between neurons is the first step to...
Analytical and experimental methods are provided for estimating synaptic connectivities from simulta...
Signal processing Modern technology is allowing researchers tocollect data from neural ensembles wit...
<div><p>Identifying the structure and dynamics of synaptic interactions between neurons is the first...
One major challenge in neuroscience is the identification of interrelations between signals reflecti...
Background: Statistical models that predict neuron spike occurrence from the earlier spiking activit...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
State-of-the-art techniques allow researchers to record large numbers of spike trains in parallel fo...
Analytical and experimental methods are provided for estimating synaptic connectivities from simulta...
We address the problem of estimating the effective connectivity of the brain network, using the inpu...
Analysing correlations between streams of events is an important problem. It arises for example in N...
Analysis of functional connectivity of simultaneously recorded multiple spike trains is one of the m...
International audienceThis paper aims at estimating causal relationships between signals to detect f...