Synthesizing Deep Neural Network Architectures using Biological Synaptic Strength Distributions

07/01/2017
by   A. H. Karimi, et al.
0

In this work, we perform an exploratory study on synthesizing deep neural networks using biological synaptic strength distributions, and the potential influence of different distributions on modelling performance particularly for the scenario associated with small data sets. Surprisingly, a CNN with convolutional layer synaptic strengths drawn from biologically-inspired distributions such as log-normal or correlated center-surround distributions performed relatively well suggesting a possibility for designing deep neural network architectures that do not require many data samples to learn, and can sidestep current training procedures while maintaining or boosting modelling performance.

READ FULL TEXT

page 1

page 2

research
06/14/2016

Deep Learning with Darwin: Evolutionary Synthesis of Deep Neural Networks

Taking inspiration from biological evolution, we explore the idea of "Ca...
research
05/23/2018

On the Relation of Impulse Propagation to Synaptic Strength

In neural network, synaptic strength could be seen as probability to tra...
research
09/06/2016

Evolutionary Synthesis of Deep Neural Networks via Synaptic Cluster-driven Genetic Encoding

There has been significant recent interest towards achieving highly effi...
research
04/07/2017

Evolution in Groups: A deeper look at synaptic cluster driven evolution of deep neural networks

A promising paradigm for achieving highly efficient deep neural networks...
research
08/14/2017

A learning framework for winner-take-all networks with stochastic synapses

Many recent generative models make use of neural networks to transform t...
research
04/03/2019

Low Power Artificial Neural Network Architecture

Recent artificial neural network architectures improve performance and p...
research
11/05/2020

Architecture Agnostic Neural Networks

In this paper, we explore an alternate method for synthesizing neural ne...

Please sign up or login with your details

Forgot password? Click here to reset