Deep learning model construction for a semi-supervised classification with feature learning

被引:0
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作者
Sridhar Mandapati
Seifedine Kadry
R. Lakshmana Kumar
Krongkarn Sutham
Orawit Thinnukool
机构
[1] R. V. R & J.C College of Engineering,Department of Computer Applications
[2] Noroff University College,Faculty of Applied Computing and Technology (FACT)
[3] Hindusthan College of Engineering and Technology,Centre of Excellence for Artificial Intelligence and Machine Learning
[4] Chiang Mai University,Department of Emergency Medicine, Faculty of Medicine
[5] Chiang Mai University,Research Group of Embedded Systems and Mobile Application in Health Science, College of Arts, Media and Technology
来源
关键词
Deep learning; Feature learning; Semi-supervised classification; Deep architecture;
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学科分类号
摘要
Several deep models were proposed in image processing, data interpretation, speech recognition, and video analysis. Most of these architectures need a massive proportion of training samples and use arbitrary configuration. This paper constructs a deep learning architecture with feature learning. Graph convolution networks (GCNs), semi-supervised learning and graph data representation, have become increasingly popular as cost-effective and efficient methods. Most existing merging node descriptions for node distribution on the graph use stabilised neighbourhood knowledge, typically requiring a significant amount of variables and a high degree of computational complexity. To address these concerns, this research presents DLM-SSC, a unique method semi-supervised node classification tasks that can combine knowledge from multiple neighbourhoods at the same time by integrating high-order convolution and feature learning. This paper employs two function learning techniques for reducing the number of parameters and hidden layers: modified marginal fisher analysis (MMFA) and kernel principal component analysis (KPCA). The MMFA and KPCA weight matrices are modified layer by layer when implementing the DLM, a supervised pretraining technique that doesn't require a lot of information. Free measuring on citation datasets (Citeseer, Pubmed, and Cora) and other data sets demonstrate that the suggested approaches outperform similar algorithms.
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收藏
页码:3011 / 3021
页数:10
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