International Transactions on Data Science, Engineering and Technology
Manuscript In Press (Unedited Version)
Research progress of generative adversarial networks GAN | Review Article
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a College of Information Science and Engineering,Hebei University of Science and Technology, ShiJiazhuang, China b College of Information Science and Engineering,Hebei University of Science and Technology, ShiJiazhuang, China c College of Information Science and Engineering,Hebei University of Science and Technology, ShiJiazhuang, China d Shijiazhuang Campus of Army Engineering University, ShiJiazhuang, China
Mr. Yongqiang Zhang
Corresponding Author Affiliation: College of Information Science and Engineering,Hebei University of Science and Technology, ShiJiazhuang, China Tel: 18932920982 E-mail: zyq@hebust.edu.cn 2nd e-mail: sun343016199@163.com Mr. Yongqiang Zhang's publications in ICSES
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This article has been retracted by International Computer Science and Engineering Society (ICSES) because of ethical misconduct, scientific distortion, or administrative error, and cannot be downloaded and used for any purpose based on the violation in ICSES Ethics in Publicationcall_made |
Retraction Note by the Editor-in-Chief
Highlights and Novelties
This article first introduces the basic theory, loss function and network model of GAN, starting from the traditional GAN algorithm, summarizes the more prominent aspects of GAN research in recent years
Then it analyzes and summarizes the derivative model of GAN in detail, and introduces several common evaluation indexes of GAN
Summarized the practical application of GAN in the field of vision, natural language processing, and various other fields.
Manuscript Abstract
Machine learning is an important field in artificial intelligence research. It is divided into two types: supervised learning and unsupervised learning. As an unsupervised learning method, generative adversarial network has been proposed in 2014, and it has been studied by many scholars. It trains the neural network through mutual adversarial learning, which makes the training and generation results of the model more convergent. This article first introduces the basic theory, loss function and network model of GAN, starting from the traditional GAN algorithm, summarizes the more prominent aspects of GAN research in recent years. Then it analyzes and summarizes the derivative model of GAN in detail, and introduces several common evaluation indexes of GAN. Summarized the practical application of GAN in the field of vision, natural language processing, and various other fields. Finally, it summarizes the current problems of GAN, and looks forward to the future development trend of GAN.
Keywords
Generative Adversarial Network Adversarial Learning Unsupervised Learning Neural Network
Copyright and Licence
© Copyright was transferred to International Computer Science and Engineering Society (ICSES) by all the Authors. This manuscript is published in Open-Access manner based on the copyright licence of Creative Commons Attribution Non Commercial 4.0 International (CC BY-NC 4.0).
Cite this manuscript as
Yongqiang Zhang, Xiaohan Sun, Wanzhen Zhou, Menghua Man, "Research progress of generative adversarial networks GAN," International Transactions on Data Science, Engineering and Technology, In Press, pp. 1-7, Sep. 2021.
For External Scientific Databeses
--BibTex--
@article{al._412 title="Research progress of generative adversarial networks GAN", author="Yongqiang Zhang", author="Xiaohan Sun", author="Wanzhen Zhou", author="Menghua Man", journal="International Transactions on Data Science, Engineering and Technology (ITDSET)", volume="", number="", pages="1-7", year="0000", month="01", day="00", publisher= "International Computer Science and Engineering Society (ICSES)", doi="", url="http://www.i-cses.com/files/download.php?pID=412"}
--EndNote--
%0 Journal Article %T Research progress of generative adversarial networks GAN %A Yongqiang Zhang %A Xiaohan Sun %A Wanzhen Zhou %A Menghua Man %J International Transactions on Data Science, Engineering and Technology (ITDSET) %V %N %P 1-7 %D 0000 %I International Computer Science and Engineering Society (ICSES) %U http://www.i-cses.com/files/download.php?pID=412 %8 2021-09-18 %R %@ 2467-297X
--Dublin--
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