JOURNAL OF CHINA UNIVERSITIES OF POSTS AND TELECOM ›› 2017, Vol. 24 ›› Issue (4): 57-68.doi: 10.1016/S1005-8885(17)60224-3
• Networks • Previous Articles Next Articles
Received:
2017-01-10
Revised:
2017-06-19
Online:
2017-08-30
Published:
2017-08-30
Contact:
Fu-Min MA
E-mail:fmmatj@126.com
Supported by:
CLC Number:
Add to citation manager EndNote|Ris|BibTeX
URL: https://jcupt.bupt.edu.cn/EN/10.1016/S1005-8885(17)60224-3
1. Pawlak Z, Skowron A. Rough sets: some extensions. Information Science, 2007, 177(1): 28-40 2. Xu W H, Li Y, Liao X W. Approaches to attribute reductions based on rough set and matrix computation in inconsistent ordered information systems. Knowledge-Based Systems, 2012, 27: 78-91 3. Skowron A, Rauszer C. The discernibility matrices and functions in information systems. Theory and Decision Library. 1992, 11: 331-362 4. Wang J, Wang J. Reduction algorithms based on discernibility matrix: the ordered attribute method. Journal of Computer Science and Technology, 2001, 16(6): 489-504 5. Felix R, Ushio T. Rough sets-based machine learning using a binary discernibility matrix. Proceedings of the 2nd International Conference on Intelligent Processing and Manufacturing of Materials (IPMM’99): Vol 1, Jul 10-15, 1999, Honolulu, HI, USA. Piscataway, NJ, USA: IEEE, 1999: 299-305 6. Lazo-Cortés M S, Martínez-Trinidad J F, Carrasco-Ochoa J A, et al. A new algorithm for computing reducts based on the binary discernibility matrix. Intelligent Data Analysis. 2016, 20(2): 317-337 7. Zhang T F, Yang X X, Ma F M. Algorithm for attribute relative reduction based on generalized binary discernibility matrix. Proceedings of the IEEE 26th Chinese Control and Decision Conference (CCDC’14), May 31-Jun 2, 2014, Changsha, China. Piscataway, NJ, USA: IEEE, 2014: 2626-2631 8. Zhang J B, Li T R, Ruan D, et al, Rough sets based matrix approaches with dynamic attribute variation in set-valued information systems. International Journal of Approximate Reasoning, 2012, 53(4): 620-635 9. Hu X H, Cercone N. Learning in relational databases: a rough set approach. Computational Intelligence, 1995, 11(2): 323-338 10. Ye D Y, Chen Z J. A new discernibility matrix and the computation of a core. Acta Electronic Sinica, 2002, 30(7): 1086-1088 (in Chinese) 11. Yao Y Y, Zhao Y. Discernibility matrix simplification for constructing attribute reducts. Information Science, 2009, 179(7): 867-882 12. Yang M, Yang P. A novel approach to improving C-tree for feature selection. Applied Soft Computing, 2011, 11(2): 924-931 13. Zhi T Y, Miao D Q. The binary discernibility matrix’s transformation and high efficiency attributes reduction algorithm’s conformation. Computer Science, 2002, 29(2): 140-142 (in Chinese) 14. Ye D Y, Chen Z J. Inconsistency classification and discernibility- matrix-based approaches for computing an attribute core. Proceedings of the 2003 International Workshop on Rough Sets, Fuzzy Sets, Data Mining, and Granular-Soft Computing (RSFDGrC’03), May 26-29, 2003, Chongqing, China. LNCS 2639. Berlin, Germany: Springer-Verlag, 2003: 269-273 15. Chen H H, Pei Z, Zhang L. Knowledge reduction based on binary discernibility matrix in variable precision rough set. Proceedings of the 2006 International Symposium on Communications and Information Technologies (ISCIT’06), Oct 18-20, 2006, Bangkok, Thailand. Piscataway, NJ, USA: IEEE, 2006: 949-954 16. Wang X Y, Yang S C, Ji B. Research on attribute reduction based on variable precision rough sets model. Proceedings of the IEEE 2011 International Conference on Computer Science and Automation Engineering (CSAE’11): Vol 1, Jun 10-12, 2011, Shanghai, China. Piscataway, NJ, USA: IEEE, 2011: 413-416 17. Yang Y Y, Chen D G, Dong Z. Novel algorithms of attribute reduction with variable precision rough set model. Neurocomputing, 2014, 139: 336-344 18. Zhang T F, Yang X X, Ma F M. Improved algorithm for attribute core computing based on binary discernibility matrix. Proceedings of the 33rd Chinese Control Conference (CCC’14), Jul 28-30, 2014, Nanjing, China. Piscataway, NJ, USA: IEEE, 2014: 7400-7404 19. Lazo-Cortés M S, Martínez-Trinidad J F, Carrasco-Ochoa J A, et al. On the relation between rough set reducts and typical testors. Information Science, 2015, 294: 152-163 20. Yan T, Han C Z. A novel approach of rough conditional entropy-based attribute selection for incomplete decision system. Mathematical Problems in Engineering, 2014: Article 728923/1-15 21. Kryszkiewicz M. Rough set approach to incomplete information systems. Information Science, 1998, 112(1): 39-49 22. Meng Z Q, Shi Z Z. A fast approach to attribute reduction in incomplete decision systems with tolerance relation-based rough sets. Information Science, 2009, 179(16): 2774-2793 23. Dai J H, Wang W T, Xu Q. An uncertainty measure for incomplete decision tables and its applications. IEEE Transactions on Cybernetics, 2013, 43(4): 1277-1289 24. Zhao H, Qin K Y. Mixed feature selection in incomplete decision table. Knowledge-Based Systems, 2014, 57: 181-190 25. Shu W H, Qian W B. A fast approach to attribute reduction from perspective of attribute measures in incomplete decision systems. Knowledge-Based Systems, 2014, 72: 60-71 26. Wang G Y, Guan L H. Data-driven valued tolerance relation. Proceedings of the 2012 International Conference on Rough Sets and Knowledge Technology (RSKT’12): Aug 17-20, 2012, Chengdu, China. LNCS 7414. Berlin, Germany: Springer-Verlag, 2012: 11-19 27. Wang G Y. Extension of rough set under incomplete information systems. Journal of Computer Research and Development, 2002, 39(10): 1238-1243 (in Chinese) 28. Sheng L, Yang H Z. Extended rough set model based on completed tolerance relation. Control and Decision, 2008, 23(3): 258-262 (in Chinese). 29. Qian Y H, Liang J Y, Li D Y, et al. Approximation reduction in inconsistent incomplete decision tables. Knowledge-Based Systems, 2010, 23: 427-433 30. Ma L W. On some types of neighborhood-related covering rough sets. International Journal of Approximate Reasoning, 2012, 53(6): 901-911 31. Tang J G, She K, Zhu W L. Covering-based rough sets based on the refinement of covering-element. International Journal of Computational and Mathematical Sciences. 2011, 5(4): 198-208 32. Xu J C, Sun L. Knowledge entropy and feature selection in incomplete decision systems. Applied Mathematics and Information Sciences, 2013, 7(2): 829-837 33. Clark P G, Grzymala-Busse J W, Rzasa W. A comparison of two MLEM2 rule induction algorithms extended to probabilistic approximations. Journal of Intelligent Information Systems, 2016, 41(3): 515-529 34. Huang W T, Wang W J, Zhao X Z. Rule extraction method in incomplete decision table for fault diagnosis based on discernibility matrix primitive. Proceedings of the 3rd International Conference on Rough Sets and Knowledge Technology (RSKT’08), May 17-19, 2008, Chengdu, China. LNCN 5009. Berlin, Germany: Springer-Verlag, 2008: 755-762 35. Yan D Q, Li K Q, Chi Z X. Soft discernibility matrix and attribute reduction for information systems. Journal on Communications, 2009, 30(8): 45-50 (in Chinese) 36. Yao Y Y, Zhao Y. Discernibility matrix simplification for constructing attribute reducts. Information Sciences, 2009, 179(7): 867-882 37. Zhang Q G, Zheng X F. Discernibility matrix algorithm of attribute reduction based on knowledge granulation in incomplete decision table. Computer Science, 2012, 39(2): 209-212 (in Chinese) 38. Lang G M, Li Q G, Guo L K. Discernibility matrix simplification with new attribute dependency functions for incomplete information systems. Knowledge and Information Systems, 2013, 37: 611-638 39. Qian W B, Shu W H, Xie Y H, et al. Feature selection using compact discernibility matrix-based approach in dynamic incomplete decision system. Journal of Information Science and Engineering, 2015, 31(2): 509-527 |
[1] | Li Hao, Zhang Linghua, Tong Cheng, Zhou Chenyang. Short-term load forecasting model based on gated recurrent unit and multi-head attention [J]. The Journal of China Universities of Posts and Telecommunications, 2023, 30(3): 25-31. |
[2] | Du Rong, Chen Shudong, Li Weiwei, Zhang Xueting, Wang Xianhui, Ge Jin. Data augmentation via joint multi-scale CNN and multi-channel attention for bumblebee image generation [J]. The Journal of China Universities of Posts and Telecommunications, 2023, 30(3): 32-40. |
[3] | Wu Qing, Wang Fan, Fan Jiulun, Hou Jing. L2,1-norm robust regularized extreme learning machine for regression using CCCP method [J]. The Journal of China Universities of Posts and Telecommunications, 2023, 30(2): 61-72. |
[4] | Wu Qing, Li Feiyan, Zhang Hengchang, Fan Jiulun, Gao Xiaofeng. Least squares twin support vector machine with asymmetric squared loss [J]. The Journal of China Universities of Posts and Telecommunications, 2023, 30(1): 1-16. |
[5] | Zhang Huibin, Li Tianzhu, Liu Haojiang, Li Zhuotong. Deep learning-based symbol detection algorithm in IMDD-OOFDM system [J]. The Journal of China Universities of Posts and Telecommunications, 2022, 29(6): 36-45. |
[6] | Jiang Fan, Chen Jiajun, Gao Youjun, Sun Changyin. Research on ECG classification based on transfer learning [J]. The Journal of China Universities of Posts and Telecommunications, 2022, 29(6): 83-96. |
[7] | DUAN Lian. Low-light image enhancement algorithm using a residual network with semantic information [J]. The Journal of China Universities of Posts and Telecommunications, 2022, 29(2): 52-62. |
[8] | Wu Qing, Fu Yanlin, Fan Jiulun, Ma Tianlu. Structural regularized twin support vector machine based on within-class scatter and between-class scatter [J]. The Journal of China Universities of Posts and Telecommunications, 2021, 28(4): 39-52. |
[9] | . Human motion prediction using optimized sliding window polynomial fitting and recursive least squares [J]. The Journal of China Universities of Posts and Telecommunications, 2021, 28(3): 76-85. |
[10] | . TCL: a taxi trajectory prediction model combining time and space features [J]. The Journal of China Universities of Posts and Telecommunications, 2021, 28(3): 63-75. |
[11] | He Mingshu, Jin Lei, Wang Xiaojuan, Li Yuan. Web log classification framework with data augmentation based on GANs [J]. The Journal of China Universities of Posts and Telecommunications, 2020, 27(5): 34-46. |
[12] | Ji Yimu, Li Ke, Liu Shangdong, Liu Qiang, Yao Haichang, Li Kui. Collaborative filtering recommendation algorithm based on interactive data classification [J]. The Journal of China Universities of Posts and Telecommunications, 2020, 27(5): 1-12. |
[13] | Yang Jianjian, Zhang Qiang, Wang Xiaolin, Du Yibo, Wang Chao, Wu Miao. Research on equipment fault diagnosis method based on random stochastic adaptive particle swarm optimization [J]. The Journal of China Universities of Posts and Telecommunications, 2020, 27(4): 17-25. |
[14] | Zhai Qi, Jiang Mingyan. Supervised learning of enhancing convolutional Hash for image retrieval [J]. The Journal of China Universities of Posts and Telecommunications, 2019, 26(4): 51-61. |
[15] | Pang Hao, Bu Yunyun, Wang Cong, Xiao Hui. Automatic detection of breast nodule in the ultrasound images using CNN [J]. The Journal of China Universities of Posts and Telecommunications, 2019, 26(2): 9-16. |
Viewed | ||||||
Full text |
|
|||||
Abstract |
|
|||||