AutoCl : A Visual Interactive System for Automatic Deep Learning
Classifier Recommendation Based on Models Performance
- URL: http://arxiv.org/abs/2202.11928v1
- Date: Thu, 24 Feb 2022 07:02:37 GMT
- Title: AutoCl : A Visual Interactive System for Automatic Deep Learning
Classifier Recommendation Based on Models Performance
- Authors: Fuad Ahmed (1), Rubayea Ferdows (2), Md Rafiqul Islam (3), Abu Raihan
M. Kamal (1) ((1) Department of Computer Science & Engineering, Islamic
University of Technology (IUT), Bangladesh, (2) Department of Computer
Science & Engineering, International University of Business Agriculture and
Technology (IUBAT), Bangladesh, (3) Department of Genetics, Genomics, and
Informatics, The University of Tennessee Health Science Center (UTHSC),
United States)
- Abstract summary: We introduce AutoCl, a visual interactive recommender system aimed at helping non-experts to adopt an appropriate deep learning (DL) classifier.
We compare features of AutoCl against several recent AutoML systems and show that it helps non-experts better in choosing DL classifier.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Nowadays, deep learning (DL) models being increasingly applied to various
fields, people without technical expertise and domain knowledge struggle to
find an appropriate model for their task. In this paper, we introduce AutoCl a
visual interactive recommender system aimed at helping non-experts to adopt an
appropriate DL classifier. Our system enables users to compare the performance
and behavior of multiple classifiers trained with various hyperparameter setups
as well as automatically recommends a best classifier with appropriate
hyperparameter. We compare features of AutoCl against several recent AutoML
systems and show that it helps non-experts better in choosing DL classifier.
Finally, we demonstrate use cases for image classification using publicly
available dataset to show the capability of our system.
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