A framework for measuring the training efficiency of a neural architecture

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Journal ArticleDate:
2024Access:
openAccessCitation:
Eduardo Cueto-Mendoza and John D. Kelleher, A framework for measuring the training efficiency of a neural architecture, Artificial Intelligence Review, 57, 349, 2024, 1 - 33Download Item:
Abstract:
Measuring Efficiency in neural network system development is an open research problem. This paper presents an experimental framework to measure the training efficiency of a neural architecture. To demonstrate our approach, we analyze the training efficiency of Convolutional Neural Networks and Bayesian equivalents on the MNIST and CIFAR-10 tasks. Our results show that training efficiency decays as training progresses and varies across different stopping criteria for a given neural model and learning task. We also find a non-linear relationship between training stopping criteria, training Efficiency, model size, and training Efficiency. Furthermore, we illustrate the potential confounding effects of overtraining on measuring the training efficiency of a neural architecture. Regarding relative training efficiency across different architectures, our results indicate that CNNs are more efficient than BCNNs on both datasets. More generally, as a learning task becomes more complex, the relative difference in training efficiency between different architectures becomes more pronounced.
Sponsor
Grant Number
Research Ireland Centre for Research Training in Digitally-Enhanced Reality (d-real)
18/CRT/6224.
Research Ireland ADAPT Centre for AI Driven Digital Content Technology
13/RC/2106 P2
Author's Homepage:
http://people.tcd.ie/kellehj3Description:
PUBLISHED
Author: Cueto-Mendoza, Eduardo; Kelleher, John D.
Sponsor:
Research Ireland Centre for Research Training in Digitally-Enhanced Reality (d-real)Research Ireland ADAPT Centre for AI Driven Digital Content Technology
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Series/Report no:
Artificial Intelligence Review;57;
349;
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Full text availableSubject:
Artificial Intelligence, Machine Learning, Deep Learning, Sustainability, Sustainable AI, Research Subject Categories::MATHEMATICSSubject (TCD):
ARTIFICIAL INTELLIGENCE , Artificial Intelligence , MACHINE LEARNINGDOI:
https://doi.org/10.1007/s10462-024-10943-8Metadata
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