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Papers : Biological and Artificial Neural Networks

I have collected the papers of Artificial Neural Networks which related to Neuroscience (especially Computational Neuroscience). If there are papers which is not listed, I would appreciate if you could tell me from Issue.

Artificial neural networks and computational neuroscience

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Issue

Analysis methods for neural networks

Methods for understanding of neural representation of ANN.

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Neuron Feature

Comparing the representations of neural networks with those of the Brains

Representational similarity analysis (RSA)
Canonical correlation analysis (CCA)
Centered kernel alignment (CKA)
Representational stability analysis (ReStA)

Fixed point analysis for RNN

Ablation analysis

Computational psychiatry

I haven't been able to completely survey papers in this field.

Deep neural network as models of the Brain

Understanding the neural representation of the brain is difficult. Neural networks learn specific tasks (or be optimized for a specific loss function), and (sometimes) can get the same representation as the brain. Then, we can indirectly know the purpose of neural representation in the brain.

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Cortical neuron

Vision

Recurrent networks for object recognition

Primary visual cortex (V1)

Visual illusion

Also see the papers associated with PredNet.

Recursive Cortical Network (RCN; non NN model)

Weight shared ResNet as RNN for object recognition

Generating visual super stimuli

Visual number sense

Auditory cortex

Motor cortex

Spatial coding (Place cells, Grid cells, Head direction cells)

Rodent barrel cortex

Convergent Temperature Representations

Cognitive task

Time perception

Short-term memory task

Language

Language learning

Neural network architecture based on neuroscience

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PredNet (Deep predictive coding network)

subLSTM

Activation functions

Normalization

Reinforcement Learning

I haven't been able to completely survey papers in this field.

Learning and development

Biologically plausible learning algorithms

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Equilibrium Propagation

Feedback alignment

Local error signal

Others

Issue

Learning dynamics of neural networks and brains

Few shot Learning

A Critique of Pure Learning

Brain Decoding & Brain-machine interface

Others