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Black Magic in Deep Learning: How Human Skill Impacts Network Training
by
Loog, Marco
, Anand, Kanav
, Jan van Gemert
, Wang, Ziqi
in
Deep learning
/ Machine learning
/ Optimization
2020
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Black Magic in Deep Learning: How Human Skill Impacts Network Training
by
Loog, Marco
, Anand, Kanav
, Jan van Gemert
, Wang, Ziqi
in
Deep learning
/ Machine learning
/ Optimization
2020
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Black Magic in Deep Learning: How Human Skill Impacts Network Training
Paper
Black Magic in Deep Learning: How Human Skill Impacts Network Training
2020
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Overview
How does a user's prior experience with deep learning impact accuracy? We present an initial study based on 31 participants with different levels of experience. Their task is to perform hyperparameter optimization for a given deep learning architecture. The results show a strong positive correlation between the participant's experience and the final performance. They additionally indicate that an experienced participant finds better solutions using fewer resources on average. The data suggests furthermore that participants with no prior experience follow random strategies in their pursuit of optimal hyperparameters. Our study investigates the subjective human factor in comparisons of state of the art results and scientific reproducibility in deep learning.
Publisher
Cornell University Library, arXiv.org
Subject
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