The growing use of multi-channel neural recording techniques in behaving animals has pro-duced rich datasets that hold immense potential for advancing our understanding of how the brain mediates behavior. One limitation of these techniques is they do not provide important information about the underlying anatomical connections among the recorded neurons within an ensemble. Inferring these connections is often intractable because the set of possible interactions grows exponentially with ensemble size.This is a fundamental challenge one confronts when interpreting these data. Unfortunately, the combination of expert knowledge and ensemble data is often insufficient for selecting a unique model of these interactions. Our approach shifts away f...
<div><p>Experiments that study neural encoding of stimuli at the level of individual neurons typical...
One influential hypothesis in neuroscience holds that the nervous system learns statistical regulari...
This paper illustrates a novel hierarchical dynamic Bayesian network modelling the spiking patterns ...
<div><p>The models in statistical physics such as an Ising model offer a convenient way to character...
In the traditional view on brain activity dynamics, the cognitive flow of information wanders throug...
For an individual to successfully complete the task of decision-making, a set of temporally-organize...
Modern recording techniques such as multi-electrode arrays and two-photon imaging methods are capabl...
This work uses a complex network approach to analyze temporal sequences of electrophysiolo...
Recent advances in the technology of multiunit recordings make it possible to test Hebb's hypothesis...
To understand whether and how a certain population of neurons represent behavioral-relevant vari- ab...
The goal of this paper is to develop a novel statistical model for studying cross-neuronal spike tra...
Recent advances in the technology of multiunit recordings make it pos-sible to test Hebb’s hypothesi...
Neural population activity in cortical circuits is not solely driven by ex-ternal inputs, but is als...
In many areas of the brain, both spontaneous and stimulus-evoked activity can manifest as synchronou...
Memories are assumed to be represented by groups of co-activated neurons, called neural ensembles. D...
<div><p>Experiments that study neural encoding of stimuli at the level of individual neurons typical...
One influential hypothesis in neuroscience holds that the nervous system learns statistical regulari...
This paper illustrates a novel hierarchical dynamic Bayesian network modelling the spiking patterns ...
<div><p>The models in statistical physics such as an Ising model offer a convenient way to character...
In the traditional view on brain activity dynamics, the cognitive flow of information wanders throug...
For an individual to successfully complete the task of decision-making, a set of temporally-organize...
Modern recording techniques such as multi-electrode arrays and two-photon imaging methods are capabl...
This work uses a complex network approach to analyze temporal sequences of electrophysiolo...
Recent advances in the technology of multiunit recordings make it possible to test Hebb's hypothesis...
To understand whether and how a certain population of neurons represent behavioral-relevant vari- ab...
The goal of this paper is to develop a novel statistical model for studying cross-neuronal spike tra...
Recent advances in the technology of multiunit recordings make it pos-sible to test Hebb’s hypothesi...
Neural population activity in cortical circuits is not solely driven by ex-ternal inputs, but is als...
In many areas of the brain, both spontaneous and stimulus-evoked activity can manifest as synchronou...
Memories are assumed to be represented by groups of co-activated neurons, called neural ensembles. D...
<div><p>Experiments that study neural encoding of stimuli at the level of individual neurons typical...
One influential hypothesis in neuroscience holds that the nervous system learns statistical regulari...
This paper illustrates a novel hierarchical dynamic Bayesian network modelling the spiking patterns ...