Pairwise maximum-entropy models have been used in neuroscience to predict the activity of neuronal populations, given only the time-averaged correlations of the neuron activities. This paper provides evidence that the pairwise model, applied to experimental recordings, would produce a bimodal distribution for the population-averaged activity, and for some population sizes the second mode would peak at high activities, that experimentally would be equivalent to 90% of the neuron population active within time-windows of few milliseconds. Several problems are connected with this bimodality: 1. The presence of the high-activity mode is unrealistic in view of observed neuronal activity and on neurobiological grounds. 2. Boltzmann learning become...
Maximum entropy models are the least structured probability distributions that exactly reproduce a c...
The inverse Ising model is used in computational neuroscience to infer probability distributions of ...
Understanding the operations of neural networks in the brain requires an understanding of whether in...
Pairwise maximum-entropy models have been used in neuroscience to predict the activity of neuronal p...
Pairwise maximum-entropy models have been used in neuroscience to predict the activity of neuronal p...
The pairwise maximum-entropy model [1,2], applied to experimental neuronal data of populations of 20...
Maximum entropy models have become popular statistical models in neuroscience and other areas of bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
International audienceMaximum entropy models can be inferred from large datasets to uncover how coll...
<p>A subgroup of 100 neurons from our set of 160 has been sorted by the firing rate. At left, the st...
The pairwise maximum entropy model, also known as the Ising model, has been widely used to analyze t...
<p>The explicit dependence of single-neuron terms (, vertical axis, ‘T’ or ‘S’), and the absence or ...
Finding models for capturing the statistical structure of multi-neuron firing patterns is a major ch...
Neural populations encode information about their stimulus in a collective fashion, by joint activit...
Maximum entropy models are the least structured probability distributions that exactly reproduce a c...
The inverse Ising model is used in computational neuroscience to infer probability distributions of ...
Understanding the operations of neural networks in the brain requires an understanding of whether in...
Pairwise maximum-entropy models have been used in neuroscience to predict the activity of neuronal p...
Pairwise maximum-entropy models have been used in neuroscience to predict the activity of neuronal p...
The pairwise maximum-entropy model [1,2], applied to experimental neuronal data of populations of 20...
Maximum entropy models have become popular statistical models in neuroscience and other areas of bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
International audienceMaximum entropy models can be inferred from large datasets to uncover how coll...
<p>A subgroup of 100 neurons from our set of 160 has been sorted by the firing rate. At left, the st...
The pairwise maximum entropy model, also known as the Ising model, has been widely used to analyze t...
<p>The explicit dependence of single-neuron terms (, vertical axis, ‘T’ or ‘S’), and the absence or ...
Finding models for capturing the statistical structure of multi-neuron firing patterns is a major ch...
Neural populations encode information about their stimulus in a collective fashion, by joint activit...
Maximum entropy models are the least structured probability distributions that exactly reproduce a c...
The inverse Ising model is used in computational neuroscience to infer probability distributions of ...
Understanding the operations of neural networks in the brain requires an understanding of whether in...