Understanding the operations of neural networks in the brain requires an understanding of whether interactions among neurons can be described by a pairwise interaction model, or whether a higher order interaction model is needed. In this article we consider the rate of synchronous discharge of a local population of neurons, a macroscopic index of the activation of the neural network that can be measured experimentally. We analyse a model based on physics’ maximum entropy principle that evaluates whether the probability of synchronous discharge can be described by interactions up to any given order. When compared with real neural population activity obtained from the rat somatosensory cortex, the model shows that interactions of at least ord...
Finding models for capturing the statistical structure of multi-neuron firing patterns is a major ch...
The topic of this dissertation is the study of the emergence of higher-order correlations in recurre...
International audienceMaximum entropy models can be inferred from large datasets to uncover how coll...
Understanding the operations of neural networks in the brain requires an understanding of whether in...
In order to understand how populations of neurons encode information about external correlates, it i...
Correlations in neural activity have been demonstrated to have profound consequences for sensory enc...
Thesis (Ph.D.)--University of Washington, 2015How does the activity of populations of neurons encode...
textabstractCoincident firing of neurons projecting to a common target cell is likely to raise the p...
Understanding how the brain processes information is a major goal in neuroscience. A crucial step to...
Understanding how the brain processes information is a major goal in neuroscience. A crucial step to...
Simultaneously recorded neurons exhibit correlations whose underlying causes are not known. Here, we...
Simultaneously recorded neurons exhibit correlations whose underlying causes are not known. Here, we...
Simultaneously recorded neurons often exhibit correlations in their spiking activity. These correlat...
Simultaneously recorded neurons exhibit correlations whose underlying causes are not known. Here, we...
∗ corresponding author Describing the collective activity of neural populations is a daunting task: ...
Finding models for capturing the statistical structure of multi-neuron firing patterns is a major ch...
The topic of this dissertation is the study of the emergence of higher-order correlations in recurre...
International audienceMaximum entropy models can be inferred from large datasets to uncover how coll...
Understanding the operations of neural networks in the brain requires an understanding of whether in...
In order to understand how populations of neurons encode information about external correlates, it i...
Correlations in neural activity have been demonstrated to have profound consequences for sensory enc...
Thesis (Ph.D.)--University of Washington, 2015How does the activity of populations of neurons encode...
textabstractCoincident firing of neurons projecting to a common target cell is likely to raise the p...
Understanding how the brain processes information is a major goal in neuroscience. A crucial step to...
Understanding how the brain processes information is a major goal in neuroscience. A crucial step to...
Simultaneously recorded neurons exhibit correlations whose underlying causes are not known. Here, we...
Simultaneously recorded neurons exhibit correlations whose underlying causes are not known. Here, we...
Simultaneously recorded neurons often exhibit correlations in their spiking activity. These correlat...
Simultaneously recorded neurons exhibit correlations whose underlying causes are not known. Here, we...
∗ corresponding author Describing the collective activity of neural populations is a daunting task: ...
Finding models for capturing the statistical structure of multi-neuron firing patterns is a major ch...
The topic of this dissertation is the study of the emergence of higher-order correlations in recurre...
International audienceMaximum entropy models can be inferred from large datasets to uncover how coll...