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Digital VLSI architectures for neural networks
S. Y. Kung
, J. N. Hwang
Electrical and Computer Engineering
Center for Statistics & Machine Learning
Research output
:
Contribution to journal
›
Conference article
›
peer-review
12
Scopus citations
Overview
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Keyphrases
Neural Network
100%
Artificial Neural Network
100%
Digital VLSI Architectures
100%
Competitive Network
50%
Probabilistic Model
50%
Iterative Model
50%
Feedback Network
50%
Intensive Computing
50%
Neurocomputing
50%
Systolic Array
50%
Learning Phase
50%
Pipeline Computing
50%
Single-hidden Layer Feedforward Network
50%
Unified Formulation
50%
Computer Science
Neural Network
100%
Artificial Neural Network
100%
Very large-scale integration (VLSI) architecture
100%
Systolic Arrays
50%
Learning Phase
50%
Feedforward Network
50%
Chemical Engineering
Neural Network
100%