Welcome to The Neuromorphic Engineer
You are in: Methods »
 
:Learning
 
Welcome to the Learning section. The latest articles for this section are displayed below:
RSS feed for Methods:Learning



Analyzing spike-timing-dependent plasticity in recurrent neuronal networks »

Matthieu Gilson, Anthony Burkitt, David Grayden, Doreen Thomas, and Leo van Hemmen

A mathematical framework is being used to investigate the learning dynamics induced by a class of biologically realistic synaptic plasticity rules in recurrently connected neuronal networks.
 
 
Audio-visual sensor fusion for object localization »

Vincent Chan

Using the onset time of stimuli, a biologically-inspired system learns to identify the sources of sounds.
 
 
Spike-based synaptic plasticity and classification on VLSI »

Srinjoy Mitra and Giacomo Indiveri

A VLSI system implements a bioplausible spike-based learning algorithm and is capable of robust classification of binary patterns, even when they are highly correlated.
 
 
BRAINS AND MACHINES
The iCub cometh »

Sunny Bains

I've been taking a break from writing to work on another project this spring and summer but managed to find the time to finish off a story about the iCub. This open-source robot is designed to allow academics to concentrate...
 
 
Supervised learning in spiking neural networks »

Filip Ponulak

A learning method called ReSuMe allows fast convergence and optimal solution stability.
 
 

@NeuroEng



Tell us what to cover!

If you'd like to write an article or know of someone else who is doing relevant and interesting stuff, let us know. E-mail the editor and suggest the subject for the article and, if you're suggesting someone else's work, tell us their name, affiliation, and e-mail.