Deep Local Predictive Coding Network (Local PCN) implemented with Chainer
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Updated
Aug 1, 2018 - Python
Deep Local Predictive Coding Network (Local PCN) implemented with Chainer
Approximate Natural Gradient Descent with precision weighted predictive coding
Recurrent spiking network models for predicting MNIST sequences
neural representations of Hebbian Predictive Coding network in visual classification and generalisation
Regularization in Predictive Coding Networks; investigate the impact of dropout and several initializations on generalization capabilities
Redirect repo for the paper " Continual Learning of Recurrent Neural Networks by Locally Aligning Distributed Representations"
Biologically plausible learning in visco-elastic materials: energy-based model (EBM) approach to learning based on prospective configuration.
A generative neural network with two streams to recognize externally generated optic flow
NGC-Learn: Predictive Coding and Neurobiologically-Motivated Learning in Python
Implementation of Neural Generative Coding
Models for predicting fMRI data associated with the Algonauts 2021 challenge (http://algonauts.csail.mit.edu).
A predictive coding neural network to learn invariant representations from short video clips
Precision estimation and second-order prediction errors in cortical circuits
predictive coding-based RL. both Active Neural Generative Coding and Prospective Configuration
Predictive coding for sequential memory
Code implementation for the paper "Relating Human Perception of Musicality to Prediction in a Predictive Coding Model"
Recurrent predictive coding networks for associative memory employing covariance learning
Deep Predictive Coding Network (PredNet) implemented with Chainer
Predictive Coding (Rao & Ballard, 1999) Model
Various experiments related to AGI
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