Unsupervised Learning in Neuromemristive Systems

01/27/2016
by   Cory Merkel, et al.
0

Neuromemristive systems (NMSs) currently represent the most promising platform to achieve energy efficient neuro-inspired computation. However, since the research field is less than a decade old, there are still countless algorithms and design paradigms to be explored within these systems. One particular domain that remains to be fully investigated within NMSs is unsupervised learning. In this work, we explore the design of an NMS for unsupervised clustering, which is a critical element of several machine learning algorithms. Using a simple memristor crossbar architecture and learning rule, we are able to achieve performance which is on par with MATLAB's k-means clustering.

READ FULL TEXT
research
05/14/2019

Evaluation Metrics for Unsupervised Learning Algorithms

Determining the quality of the results obtained by clustering techniques...
research
12/10/2019

Quantifying the Chaos Level of Infants' Environment via Unsupervised Learning

Acoustic environments vary dramatically within the home setting. They ca...
research
07/30/2013

Optimistic Concurrency Control for Distributed Unsupervised Learning

Research on distributed machine learning algorithms has focused primaril...
research
03/04/2020

Plasticity-Enhanced Domain-Wall MTJ Neural Networks for Energy-Efficient Online Learning

Machine learning implements backpropagation via abundant training sample...
research
03/12/2021

Mining Artifacts in Mycelium SEM Micrographs

Mycelium is a promising biomaterial based on fungal mycelium, a highly p...
research
08/01/2019

Featuring the topology with the unsupervised machine learning

Images of line drawings are generally composed of primitive elements. On...

Please sign up or login with your details

Forgot password? Click here to reset