Recent advances in large-scale ensemble recordings allow monitoring of activity patterns of several hundreds of neurons in freely behaving animals. The emergence of such high-dimensional datasets poses challenges for the identification and analysis of dynamical network patterns. While several types of multivariate statistical methods have been used for integrating responses from multiple neurons, their effectiveness in pattern classification and predictive power has not been compared in a direct and systematic manner. Here we systematically employed a series of projection methods, such as Multiple Discriminant Analysis (MDA), Principal Components Analysis (PCA) and Artificial Neural Networks (ANN), and compared them with non-projection mult...
This paper presents the derivation of an unsupervised learning algorithm, which enables the identifi...
Understanding the brain requires knowledge of the relationship between neuronal activity and behavio...
Neural responses in higher cortical areas often display a baffling complexity. In animals performin...
Recent advances in large-scale ensemble recordings allow monitoring of activity patterns of several ...
The size and complexity of neural data is increasing at a dramatic pace due to rapid advances in exp...
<p>(<b>A</b>) From spike trains of CA1 units, firing rates in two 250 msec windows after stimuli pre...
In this study, Robust Principal Component Analysis (RPCA) is applied to neural spike datasets to ext...
Recent developments of optical and electrophysiological recording tools allow the detailed capture o...
Although the existence of correlated spiking between neurons in a population is well known, the role...
A key problem in systems neuroscience is to characterize how populations of neurons encode informati...
Although the existence of correlated spiking between neurons in a population is well known, the role...
AbstractHow do populations of neurons represent a variable of interest? The notion of feature spaces...
In statistical pattern recognition, the decision of which features to use is usually left to human j...
Recent improvements in high performance fluorescent sensors and scientific CMOS cameras enable optic...
Pattern recognition methods have shown that fMRI data can reveal significant information about brain...
This paper presents the derivation of an unsupervised learning algorithm, which enables the identifi...
Understanding the brain requires knowledge of the relationship between neuronal activity and behavio...
Neural responses in higher cortical areas often display a baffling complexity. In animals performin...
Recent advances in large-scale ensemble recordings allow monitoring of activity patterns of several ...
The size and complexity of neural data is increasing at a dramatic pace due to rapid advances in exp...
<p>(<b>A</b>) From spike trains of CA1 units, firing rates in two 250 msec windows after stimuli pre...
In this study, Robust Principal Component Analysis (RPCA) is applied to neural spike datasets to ext...
Recent developments of optical and electrophysiological recording tools allow the detailed capture o...
Although the existence of correlated spiking between neurons in a population is well known, the role...
A key problem in systems neuroscience is to characterize how populations of neurons encode informati...
Although the existence of correlated spiking between neurons in a population is well known, the role...
AbstractHow do populations of neurons represent a variable of interest? The notion of feature spaces...
In statistical pattern recognition, the decision of which features to use is usually left to human j...
Recent improvements in high performance fluorescent sensors and scientific CMOS cameras enable optic...
Pattern recognition methods have shown that fMRI data can reveal significant information about brain...
This paper presents the derivation of an unsupervised learning algorithm, which enables the identifi...
Understanding the brain requires knowledge of the relationship between neuronal activity and behavio...
Neural responses in higher cortical areas often display a baffling complexity. In animals performin...