How Computationally Complex Is a Single Neuron?

Message boards : Science : How Computationally Complex Is a Single Neuron?
Message board moderation

To post messages, you must log in.

AuthorMessage
Jim1348

Send message
Joined: 12 Jul 20
Posts: 48
Credit: 73,492,193
RAC: 0
Message 1357 - Posted: 7 Sep 2021, 11:58:52 UTC

Today, the most powerful artificial intelligence systems employ a type of machine learning called deep learning. Their algorithms learn by processing massive amounts of data through hidden layers of interconnected nodes, referred to as deep neural networks. As their name suggests, deep neural networks were inspired by the real neural networks in the brain, with the nodes modeled after real neurons — or, at least, after what neuroscientists knew about neurons back in the 1950s, when an influential neuron model called the perceptron was born. Since then, our understanding of the computational complexity of single neurons has dramatically expanded, so biological neurons are known to be more complex than artificial ones. But by how much?

To find out, David Beniaguev, Idan Segev and Michael London, all at the Hebrew University of Jerusalem, trained an artificial deep neural network to mimic the computations of a simulated biological neuron. They showed that a deep neural network requires between five and eight layers of interconnected “neurons” to represent the complexity of one single biological neuron.

https://www.quantamagazine.org/how-computationally-complex-is-a-single-neuron-20210902/?utm_source=pocket-newtab
ID: 1357 · Rating: 0 · rate: Rate + / Rate - Report as offensive     Reply Quote

Message boards : Science : How Computationally Complex Is a Single Neuron?

©2022 MLC@Home Team
A project of the Cognition, Robotics, and Learning (CORAL) Lab at the University of Maryland, Baltimore County (UMBC)