Citation: | DUAN Hua, FENG Tong, LIU Songning, et al., “Tumor Classification of Gene Expression Data by Fuzzy Hybrid Twin SVM,” Chinese Journal of Electronics, vol. 31, no. 1, pp. 99-106, 2022, doi: 10.1049/cje.2020.00.260 |
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