Computing Reviews
Today's Issue Hot Topics Search Browse Recommended My Account Log In
Review Help
Search
Neuromemrisitive architecture of HTM with on-device learning and neurogenesis
Zyarah A., Kudithipudi D. ACM Journal on Emerging Technologies in Computing Systems15 (3):1-24,2019.Type:Article
Date Reviewed: Oct 11 2019

This very comprehensive technical account presents a thoroughly worked out “architecture for the spatial pooler (SP)” of the hierarchical temporal memory (HTM) algorithm. This algorithm is designed to produce invariant representations of spatial and spatio-temporal inputs.

The proposed research defines different features that act on HTM synapses, such as memristors, synthetic synapses, and a crossbar architecture for the SP to optimize algorithmic performance during the training phase. Furthermore, to strengthen the robustness of the SP, plasticity mechanisms are introduced: neurogenesis and homeostatic intrinsic plasticity.

This well-argued paper includes a detailed overview of HTM and a step-by-step description of the algorithm and its components. It first presents the adopted design methodology for improving the algorithm, with a lot of technical insight and clearly explained formulas. Next, it covers system design and implementation in a way that is reproducible. Finally, it outlines the experimental setup in equally great detail, including a discussion of the evaluation metrics. The experiments are carried out in the image recognition domain over well-established datasets (the Modified National Institute of Standards and Technology (MNIST) database and the Yale Face database), evaluating noise robustness and power consumption, for example, to prove the algorithm’s suitability for mobile devices. The evaluation results section describes the high scores without comparing the proposed approach to other approaches.

The paper is clear and well done, with a long list of references and a well-described (reproducible) algorithm. It is a very good read for graduate students, scholars, and engineers interested in artificial intelligence and optimal methods for machine intelligence.

Reviewer:  Mariana Damova Review #: CR146726 (1912-0451)
Bookmark and Share
  Featured Reviewer  
 
General (I.0 )
 
 
Neural Nets (I.5.1 ... )
 
 
Learning (I.2.6 )
 
Would you recommend this review?
yes
no
Other reviews under "General": Date
A multi-modal approach for determining speaker location and focus
Siracusa M., Morency L., Wilson K., Fisher J., Darrell T.  Multimodal interfaces (Proceedings of the 5th international conference, Vancouver, British Columbia, Canada, Nov 5-7, 2003)77-80, 2003. Type: Proceedings
Mar 1 2004
Nanotechnology: science and computation (Natural Computing Series)
Chen J., Jonoska N., Rozenberg G., Springer-Verlag New York, Inc., Secaucus, NJ, 2006.  393, Type: Book (9783540302957)
Aug 2 2007
High performance computing for big data: methodologies and applications
Wang C., CRC Press, Inc., Boca Raton, FL, 2018.  286, Type: Book (978-1-498783-99-6), Reviews: (1 of 2)
Apr 4 2019
more...

E-Mail This Printer-Friendly
Send Your Comments
Contact Us
Reproduction in whole or in part without permission is prohibited.   Copyright 1999-2024 ThinkLoud®
Terms of Use
| Privacy Policy