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Multi-view learning review: understanding methods and their application

Authors
Bae, Kang IlLee, Yung SeopLim, Changwon
Issue Date
Feb-2019
Publisher
KOREAN STATISTICAL SOC
Keywords
multi-view learning; multi-modal learning; deep learning; machine learning; data integration
Citation
KOREAN JOURNAL OF APPLIED STATISTICS, v.32, no.1, pp 41 - 68
Pages
28
Indexed
ESCI
KCI
Journal Title
KOREAN JOURNAL OF APPLIED STATISTICS
Volume
32
Number
1
Start Page
41
End Page
68
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/8462
DOI
10.5351/KJAS.2019.32.1.041
ISSN
1225-066X
2383-5818
Abstract
Multi-view learning considers data from various viewpoints as well as attempts to integrate various information from data. Multi-view learning has been studied recently and has showed superior performance to a model learned from only a single view. With the introduction of deep learning techniques to a multi-view learning approach, it has showed good results in various fields such as image, text, voice, and video. In this study, we introduce how multi-view learning methods solve various problems faced in human behavior recognition, medical areas, information retrieval and facial expression recognition. In addition, we review data integration principles of multi-view learning methods by classifying traditional multi-view learning methods into data integration, classifiers integration, and representation integration. Finally, we examine how CNN, RNN, RBM, Autoencoder, and GAN, which are commonly used among various deep learning methods, are applied to multi-view learning algorithms. We categorize CNN and RNN-based learning methods as supervised learning, and RBM, Autoencoder, and GAN-based learning methods as unsupervised learning.
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