Frontiers in Computational Neuroscience
68 subscribers
401 photos
401 links
Download Telegram
Bayesian continual learning <em>via</em> spiking neural networks

No abstract
Read more...
Production of adaptive movement patterns <em>via</em> an insect inspired spiking neural network central pattern generator

No abstract
Read more...
Perineuronal nets restrict transport near the neuron surface: A coarse-grained molecular dynamics study

No abstract
Read more...
Integrating ankle and hip strategies for the stabilization of upright standing: An intermittent control model

No abstract
Read more...
Integrated world modeling theory expanded: Implications for the future of consciousness

No abstract
Read more...
🤔1
An interpretable approach for automatic aesthetic assessment of remote sensing images

No abstract
Read more...
Biases in BCI experiments: Do we really need to balance stimulus properties across categories?

No abstract
Read more...
👍1
Active inference, morphogenesis, and computational psychiatry

No abstract
Read more...
An efficient computer vision-based approach for acute lymphoblastic leukemia prediction

No abstract
Read more...
Mathematical processing of trading strategy based on long short-term memory neural network model

No abstract
Read more...
Disrupted visual input unveils the computational details of artificial neural networks for face perception

No abstract
Read more...
Quasicriticality explains variability of human neural dynamics across life span

No abstract
Read more...
Classification of dry and wet macular degeneration based on the ConvNeXT model

CONCLUSION: The ConvNeXT-based category model for dry and wet macular degeneration automatically identified dry and wet macular degeneration, aiding rapid, and accurate clinical diagnosis.
Read more...
Adapting hippocampus multi-scale place field distributions in cluttered environments optimizes spatial navigation and learning

Extensive studies in rodents show that place cells in the hippocampus have firing patterns that are highly correlated with the animal's location in the environment and are organized in layers of increasing field sizes or scales along its dorsoventral axis. In this study, we use a spatial cognition model to show that different field sizes could be exploited to adapt the place cell representation to different environments according to their size and complexity. Specifically, we provide an in-depth...
Read more...
Emergence of radial orientation selectivity: Effect of cell density changes and eccentricity in a layered network

We establish a simple mechanism by which radially oriented simple cells can emerge in the primary visual cortex. In 1986, R. Linsker. proposed a means by which radially symmetric, spatial opponent cells can evolve, driven entirely by noise, from structure in the initial synaptic connectivity distribution. We provide an analytical derivation of Linsker's results, and further show that radial eigenfunctions can be expressed as a weighted sum of degenerate Cartesian eigenfunctions, and vice-versa....
Read more...
Analysis of instantaneous brain interactions contribution to a motor imagery classification task

The purpose of this study is to analyze the contribution of the interactions between electrodes, measured either as correlation or as Jaccard distance, to the classification of two actions in a motor imagery paradigm, namely, left-hand movement and right-hand movement. The analysis is performed in two classifier models, namely, a static (linear discriminant analysis, LDA) model and a dynamic (hidden conditional random field, HCRF) model. The impact of using the sliding window technique (SWT) in...
Read more...
Feature optimization based on improved novel global harmony search algorithm for motor imagery electroencephalogram classification

CONCLUSION: These superior experimental results demonstrate that the optimal frequency band and time interval selected by the INGHS algorithm could significantly improve the decoding accuracy compared with the traditional CSP method. This method has a potential to improve the performance of MI-based BCI systems.
Read more...
Importance of prefrontal meta control in human-like reinforcement learning

Recent investigation on reinforcement learning (RL) has demonstrated considerable flexibility in dealing with various problems. However, such models often experience difficulty learning seemingly easy tasks for humans. To reconcile the discrepancy, our paper is focused on the computational benefits of the brain's RL. We examine the brain's ability to combine complementary learning strategies to resolve the trade-off between prediction performance, computational costs, and time constraints. The...
Read more...
On the similarities of representations in artificial and brain neural networks for speech recognition

INTRODUCTION: In recent years, machines powered by deep learning have achieved near-human levels of performance in speech recognition. The fields of artificial intelligence and cognitive neuroscience have finally reached a similar level of performance, despite their huge differences in implementation, and so deep learning models can-in principle-serve as candidates for mechanistic models of the human auditory system.
Read more...
Geometric algebra based recurrent neural network for multi-dimensional time-series prediction

Recent RNN models deal with various dimensions of MTS as independent channels, which may lead to the loss of dependencies between different dimensions or the loss of associated information between each dimension and the global. To process MTS in a holistic way without losing the inter-relationship among dimensions, this paper proposes a novel Long-and Short-term Time-series network based on geometric algebra (GA), dubbed GA-LSTNet. Specifically, taking advantage of GA, multi-dimensional data at...
Read more...