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HOME > J. Microbiol > Volume 58(3); 2020 > Article
Journal Article
Machine learning methods for microbiome studies
Junghyun Namkung
Journal of Microbiology 2020;58(3):206-216.
DOI: https://doi.org/10.1007/s12275-020-0066-8
Published online: February 27, 2020
Data Analytics CoE, Data R&D Center, SK Telecom, Seoul 04539, Republic of KoreaData Analytics CoE, Data R&D Center, SK Telecom, Seoul 04539, Republic of Korea
Corresponding author:  Junghyun Namkung , Tel: -, 
Received: 5 February 2020   • Revised: 17 February 2020   • Accepted: 17 February 2020
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    Machine learning methods for microbiome studies
    J. Microbiol. 2020;58(3):206-216.   Published online February 27, 2020
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