journal article Mar 29, 2022

Malware detection with dynamic evolving graph convolutional networks

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Cited By
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Applied Soft Computing
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Citations
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References
Details
Published
Mar 29, 2022
Vol/Issue
37(10)
Pages
7261-7280
License
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Funding
National Science Fund for Distinguished Young Scholars Award: 61903021
Cite This Article
Zhichao Zhang, Wei Wang, Haifeng Song (2022). Malware detection with dynamic evolving graph convolutional networks. International Journal of Intelligent Systems, 37(10), 7261-7280. https://doi.org/10.1002/int.22880
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