[1]FENG Dan,HUANG Yang,SHI Yunpeng,et al.A discernibility matrix-based attribute reduction for continuous data[J].CAAI Transactions on Intelligent Systems,2017,12(3):371-376.[doi:10.11992/tis.201704032]
Copy

A discernibility matrix-based attribute reduction for continuous data

References:
[1] PAWLAK Z. Rough sets [J]. International journal of computer and information sciences, 1982, 11(5): 341-356.
[2] SKOWRON A,RAUSZER C. The discernibility matrices and functions in information systems[C]//Slowinski R. (Ed.), Intelligent Decision Support. Dordrecht, Kluwer Academic Publishers, 1992: 331-362.
[3] MI J S, WU W Z, ZHANG W X. Approaches to knowledge reduction based on variable precision rough sets model [J]. Information sciences, 2004, 159(3/4): 255-272.
[4] WU W Z, ZHANG W X. Neighborhood operator systems and approximations [J]. Information sciences, 2002, 144(1/4): 201-217.
[5] HU Q H, YU D, LIU J F, et al. Neighborhood-rough-set based heterogeneous feature subset selection [J]. Information sciences, 2008, 178(18): 3577-3594.
[6] KIM D. Data classification based on tolerant rough set [J]. Pattern recognition, 2001, 34(8): 1613-1624.
[7] ZHAO H, WANG P, HU Q H. Cost-sensitive feature selection based on adaptive neighborhood granularity with multi-level confidence [J]. Information sciences, 2016, 366: 134-149.
[8] CHEN Y, ZHANG Z, ZHENG J, et al. Gene selection for tumor classification using neighborhood rough sets and entropy measures [J]. Journal of biomedical informatics, 2017, 67:59-68
[9] ZHU P, HU Q H. Adaptive neighborhood granularity selection and combination based on margin distribution optimation [J]. Information sciences, 2013, 249:1-12.
[10] 鲍丽娜,丁世飞, 许新征, 等. 基于邻域粗糙集的极速学习机算法[J]. 济南大学学报,2015, 29(5): 367-371.BAO Lina, DING Shifei, XU Xinzheng, et al. Extreme learning machine algorithm based on neighborhood rough sets[J]. Journal of jinan university, 2015, 29(5): 367-371.
[11] 谢娟英, 李楠, 乔子芮. 基于邻域粗糙集的不完整决策系统特征选择算法[J]. 南京大学学报,2016, 47:384-390.XIE Juanying, LI Nan, QIAO Zirui. A feature selection algorithm based on neighborhood rough sets for incomplete information systems[J]. Journal of Nanjing university, 2016, 47:384-390.
[12] 徐伟华. 序信息系统与粗糙集[M]. 北京: 科学出版社, 2013.
[13] GRECO S, MATARAZZO B, SLOWINSKI R. Rough sets methodology for sorting problems in presence of multiple attributes and criteria[J]. European journal of operational research, 2002, 38:247-259.
[14] WANG C, HE Q, CHEN D G, et al. A novel method for attribute reduction of covering decision tables[J]. Information sciences, 2014, 254: 181-196.
[15] WANG C, SHAO M, SUN B, et al. An improved attribute reduction scheme with covering based rough sets[J]. Applied soft computing, 2015, 26(1): 235-243.
[16] ZHU W, WANG F Y. Reduction and maximization of covering generalized rough sets[J]. Information sciences, 2003, 152: 217-230.
[17] DUBOIS D, PRADE H. Rough fuzzy sets and fuzzy rough sets[J]. International journal of general systems, 1990, 17: 191-208.
[18] WANG C, QI Y, HU Q, et al. A fitting model for feature selection with fuzzy rough sets[J]. IEEE transaction on fuzzy systems, 2016,99: 1-1.
[19] WANG C,SHAO M, QIAN Y. Feature subset selection based on fuzzy neighborhood rough sets[J]. Knowledge-based systems, 2016, 111(1): 173-179.
[20] CHEN D G, ZHANG L, ZHAO S Y, et al. A novel algorithm for finding reducts with fuzzy rough sets[J]. IEEE transaction on fuzzy systems, 2013, 20(2): 385-389.
[21] WANG X Z, ZHAI J H, LU S X. Induction of multiple fuzzy decision trees based on rough set technique[J]. Information sciences, 2008, 178(16): 3188-3202.
[22] ZHAO S Y, TSANG C C, CHEN D. Building a rule-based classifier by using fuzzy rough set technique[J]. IEEE transaction on knowledge and data engineering, 2010, 22(5): 624-638.
Similar References:

Memo

-

Last Update: 2017-06-25

Copyright © CAAI Transactions on Intelligent Systems