Computer Science ›› 2026, Vol. 53 ›› Issue (7): 195-204.doi: 10.11896/jsjkx.250500032
• Artificial Intelligence • Previous Articles Next Articles
ZHANG Xingwang1, HE Xiaoli2,3, CHEN Si2, SHE Yanhong2,3
CLC Number:
| [1]LI J,LIU H.Challenges of feature selection for big dataanalytics[J].IEEE Intelligent Systems,2017,32(2):9-15. [2]LI J,CHENG K,WANG S,et al.Feature selection:A data perspective[J].ACM Computing Surveys,2017,50(6):1-45. [3]CAI J,LUO J,WANG S,et al.Feature selection in machinelearning:A new perspective[J].Neurocomputing,2018,300:70-79. [4]GUYON I,ELISSEEFF A.An introduction to variable and feature selection[J].Journal of Machine Learning Research,2003,3(Mar):1157-1182. [5]CHEN B,HONG J R,WANG Y D.The Problem of Selecting Optimal Feature Subset [J].Journal of Computer Science,1997,20(2):133-138. [6]SHI Q J,PAN F,LONG F H,et al.Review on Feature Selection Methods [J].Microelectronics and Computer,2022,39(3):1-8. [7]ZHANG J L,WANG X F,LU L,et al.Comparative Analysis of Several New Intelligent Optimization Algorithms [J].Journal of Frontiers of Computer Science & Technology,2022,16(1):88-105. [8]GAO H M,WANG Y H,BLAN C,et al.Research on Feature Selection Methods Based on Hybrid Evolutionary Algorithms[J].Acta Electronica Sinica,2023,51(6):1619-1636. [9]EIBEN A E,SMITH J.From evolutionary computation to theevolution of things[J].Nature,2015,521(7553):476-482. [10]XU H,XUE B,ZHANG M.A duplication analysis-based evolutionary algorithm for biobjective feature selection[J].IEEE Transactions on Evolutionary Computation,2020,25(2):205-218. [11]XU Z Z,SHEN D R,NIE T Z,et al.Hybrid Feature Selection Algorithm Based on Information Gain Ratio and Genetic Algorithm [J].Journal of Software,2022,33(3):1128-1140. [12]GAO J,WANG Z,JIN T,et al.Information gain ratio-basedsubfeature grouping empowers particle swarm optimization for feature selection[J].Knowledge-Based Systems,2024,286:111380. [13]KARIMI F,DOWLATSHAHI M B,HASHEMI A.Semi ACO:A semi-supervised feature selection based on ant colony optimization[J].Expert Systems with Applications,2023,214:119130. [14]QU L,HE W,LI J,et al.Explicit and size-adaptive PSO-based feature selection for classification[J].Swarm and Evolutionary Computation,2023,77:101249. [15]YANG X S.A new metaheuristic bat-inspired algorithm[M]//Nature Inspired Cooperative Strategies for Optimization(NICSO 2010).Berlin:Springer,2010:65-74. [16]DEUTSCH D.Quantum theory,the Church-Turing principleand the universal quantum computer[J].Proceedings of the Royal Society of London.A.Mathematical and Physical Sciences,1985,400(1818):97-117. [17]ZOUACHE D,GOT A,ALARABIAT D,et al.A novel multi-objective wrapper-based feature selection method using quantum-inspired and swarm intelligence techniques[J].Multimedia Tools and Applications,2024,83(8):22811-22835. [18]ALBINO A S,PIRES O M,NOOBLATH M Q,et al.Evolutio-nary quantum feature selection[J].arXiv:2303.07131,2023. [19]SAYED G I,DARWISH A,HASSANIEN A E.Quantum multiverse optimization algorithm for optimization problems[J].Neural Computing and Applications,2019,31:2763-2780. [20]PRAMANIK R,SARKAR S,SARKAR R.An adaptive and altruistic PSO-based deep feature selection method for Pneumonia detection from Chest X-rays[J].Applied Soft Computing,2022,128:109464. [21]YANG X S.Nature-inspired optimization algorithms[M].Academic Press,2020. [22]SOWMYA R,PREMKUMAR M,JANGIR P.Newton-Raph-son-based optimizer:A new population-based metaheuristic algorithm for continuous optimization problems[J].Engineering Applications of Artificial Intelligence,2024,128:107532. [23]GAO Y,ZHANG J,WANG Y,et al.Love evolution algorithm:A stimulus-value-role theory-inspired evolutionary algorithm for global optimization[J].The Journal of Supercomputing,2024,80(9):12346-12407. [24]CHOPRA N,ANSARI M M.Golden jackal optimization:A novel nature-inspired optimizer for engineering applications[J].Expert Systems with Applications,2022,198:116924. [25]NARUEI I,KEYNIA F.A new optimization method based on COOT bird natural life model[J].Expert Systems with Applications,2021,183:115352. [26]HANCER E.New filter approaches for feature selection using differential evolution and fuzzy rough set theory[J].Neural Computing and Applications,2020,32(7):2929-2944. |
| [1] | ZHU Bin, LI Xiaobin. AETC:Image Classification Model via Attention-based Topological Features Fusion [J]. Computer Science, 2026, 53(7): 24-33. |
| [2] | HUANG Yilu, HE Xingxing, REN Ruibin, ZENG Wenqiang. Collaborative Adversarial Training Defense Framework for Network Traffic Classification Based on Ensemble Learning and Weight Constraint [J]. Computer Science, 2026, 53(7): 397-405. |
| [3] | SUN Bo, WANG Zhijun, ZHOU Zhunan, LI Qingjie, WANG Yun, GENG Xia, ZHANG Yan , SUN Chenxuan. Imbalanced Data Learning Approach Utilizing Feature Value Based Class Overlap Degree [J]. Computer Science, 2026, 53(6A): 250600199-8. |
| [4] | ZHONG Hao, KONG Qingxuan, CAI Xianqing, LI Zhizhong, SUN Hao. Intelligent Recognition Method Based on Multimodal Feature Fusion [J]. Computer Science, 2026, 53(6A): 250700065-10. |
| [5] | XU Rui, LIU Jin, LIU Xudong, GUAN Jian, DONG Wei. Exploring the Generalization Ability of Prompt-based Large Language Models for TextClassification [J]. Computer Science, 2026, 53(6A): 250400092-7. |
| [6] | DUAN Pengsong, LUO Yu, WANG Chao. Q&A Model for Agricultural Diseases Based on Transformer [J]. Computer Science, 2026, 53(6A): 250400114-9. |
| [7] | GUO Jingchen, YANG Kuiwu, DING Mengdi, WEI Jianghong. Survey of Adversarial Sample Attacks for Vision Transformer [J]. Computer Science, 2026, 53(5): 404-418. |
| [8] | LI Yidan, CUI Jianying, XIONG Minghui. Category-Theoretic Semantic Representation: Systematic Review and Compositional Mechanism Analysis [J]. Computer Science, 2026, 53(4): 337-346. |
| [9] | LI Hui, LIU Shujuan, JU Mingmei, WANG Jiepeng, JI Yingsong. High Frequency-Dense Quantum Gate Set Optimization Algorithm for Quantum Circuit in NISQ Era [J]. Computer Science, 2026, 53(4): 112-120. |
| [10] | WANG Jinghong, LI Pengchao, MI Jusheng, WANG Wei. Multi-channel Graph Kolmogorov-Arnold Network Based on WL Graph Core [J]. Computer Science, 2026, 53(4): 224-234. |
| [11] | ZHENG Yi, JIA Xinghao, ZHANG Junwen, REN Shuang. Image Classification Based on Hybrid Quantum-Classical Long-Short Range Feature Extension Network [J]. Computer Science, 2026, 53(4): 277-283. |
| [12] | WANG Jinghong, LI Pengchao, WANG Xizhao, ZHANG Zili. Dual-channel Graph Neural Network Based on KAN [J]. Computer Science, 2026, 53(3): 188-196. |
| [13] | QIN Jing, LI Guanfeng, CHEN Yuyin, XIAO Yuhang. Embedding Model of Knowledge Graph via Jointly Modeling Ontology and Instances [J]. Computer Science, 2026, 53(3): 331-340. |
| [14] | CHEN Han, XU Zefeng, JIANG Jiu, FAN Fan, ZHANG Junjian, HE Chu, WANG Wenwei. Large Language Model and Deep Network Based Cognitive Assessment Automatic Diagnosis [J]. Computer Science, 2026, 53(3): 41-51. |
| [15] | GE Zeqing, HUANG Shengjun. Semi-supervised Learning Method for Multi-label Tabular Data [J]. Computer Science, 2026, 53(3): 151-157. |
|
||