Connectionism, Complexity, and Living Systems: a comparison of Artificial and Biological Neural Networks

03/15/2021
by   Krishna Katyal, et al.
0

While Artificial Neural Networks (ANNs) have yielded impressive results in the realm of simulated intelligent behavior, it is important to remember that they are but sparse approximations of Biological Neural Networks (BNNs). We go beyond comparison of ANNs and BNNs to introduce principles from BNNs that might guide the further development of ANNs as embodied neural models. These principles include representational complexity, complex network structure/energetics, and robust function. We then consider these principles in ways that might be implemented in the future development of ANNs. In conclusion, we consider the utility of this comparison, particularly in terms of building more robust and dynamic ANNs. This even includes constructing a morphology and sensory apparatus to create an embodied ANN, which when complemented with the organizational and functional advantages of BNNs unlocks the adaptive potential of lifelike networks.

READ FULL TEXT
research
05/10/2005

Artificial Neural Networks and their Applications

The Artificial Neural network is a functional imitation of simplified mo...
research
04/02/2017

Identifying networks with common organizational principles

Many complex systems can be represented as networks, and the problem of ...
research
12/02/2019

Simulation of neural function in an artificial Hebbian network

Artificial neural networks have diverged far from their early inspiratio...
research
01/08/2023

Neural network models

This work presents the current collection of mathematical models related...
research
02/20/2019

Emulating Human Developmental Stages with Bayesian Neural Networks

We compare the acquisition of knowledge in humans and machines. Research...
research
10/03/2017

Simple Cortex: A Model of Cells in the Sensory Nervous System

Neuroscience research has produced many theories and computational neura...

Please sign up or login with your details

Forgot password? Click here to reset