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·1082· 智能系统学报 第14卷 [39]BELLINGER C.JAPKOWICZ N.DRUMMOND C. [50]COST S,SALZBERG S.A weighted nearest neighbor al- Synthetic oversampling for advanced radioactive threat gorithm for learning with symbolic features[J].Machine detection[C]//Proceedings of 2015 IEEE International learning,1993,10(1):57-78 Conference on Machine Learning and Applications [51]KURNIAWATI Y E,PERMANASARI A E,FAUZIATI Miami,.FL,USA,2015:948-953. S.Adaptive synthetic-nominal (ADASYN-N)and adapt- [40]LI Xiao,ZOU Beiji,WANG Lei,et al.A novel LASSO- ive synthetic-KNN (ADASYN-KNN)for multiclass im- based feature weighting selection method for microarray balance learning on laboratory test data[C]//Proceedings data classification[C]//Proceedings of 2015 IET Interna- of 2018 International Conference on Science and Techno- tional Conference on Biomedical Image and Signal Pro- logy.Yogyakarta,Indonesia,2018:1-6. cessing.Beijing,China,2015:1-5. 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