Biologically Inspired Feedforward Supervised Learning for Deep Self-Organizing Map Networks

10/26/2017
by   Takashi Shinozaki, et al.
0

In this study, we propose a novel deep neural network and its supervised learning method that uses a feedforward supervisory signal. The method is inspired by the human visual system and performs human-like association-based learning without any backward error propagation. The feedforward supervisory signal that produces the correct result is preceded by the target signal and associates its confirmed label with the classification result of the target signal. It effectively uses a large amount of information from the feedforward signal, and forms a continuous and rich learning representation. The method is validated using visual recognition tasks on the MNIST handwritten dataset.

READ FULL TEXT
research
12/20/2013

Competitive Learning with Feedforward Supervisory Signal for Pre-trained Multilayered Networks

We propose a novel learning method for multilayered neural networks whic...
research
05/28/2019

Greedy InfoMax for Biologically Plausible Self-Supervised Representation Learning

We propose a novel deep learning method for local self-supervised repres...
research
02/23/2017

Bidirectional Backpropagation: Towards Biologically Plausible Error Signal Transmission in Neural Networks

The back-propagation (BP) algorithm has been considered the de-facto met...
research
12/19/2022

Fixed-Weight Difference Target Propagation

Target Propagation (TP) is a biologically more plausible algorithm than ...
research
05/09/2021

Holomorphic feedforward networks

A very popular model in machine learning is the feedforward neural netwo...
research
02/24/2020

Supervised Deep Similarity Matching

We propose a novel biologically-plausible solution to the credit assignm...
research
07/04/2021

Autoencoder based Randomized Learning of Feedforward Neural Networks for Regression

Feedforward neural networks are widely used as universal predictive mode...

Please sign up or login with your details

Forgot password? Click here to reset