[1] PAWLAK Z. Rough Set. International Journal of Computer and Information Sciences, 1982, 11(5): 341-356.
[2] YANG B, HU B Q. Communication between Fuzzy Information Systems Using Fuzzy Covering-Based Rough Sets. International Journal of Approximate Reasoning, 2018, 103: 414-436.
[3] PANG B, MI J S, XIU Z Y. L-Fuzzifying Approximation Operators in Fuzzy Rough Sets. Information Sciences, 2019, 480: 14-33.
[4] HAN S E. Roughness Measures of Locally Finite Covering Rough Sets. International Journal of Approximate Reasoning, 2019, 105: 368-385.
[5] SUN B Z, MA W M, QIAN Y H. Multi-granulation Fuzzy Rough Set over Two Universes and Its Application to Decision Making. Knowledge Based Systems, 2017, 123: 61-74.
[6] LIANG D C, XU Z S, LIU D. Three-Way Decisions with Intuitio-nistic Fuzzy Decision-Theoretic Rough Sets Based on Point Operators. Information Sciences, 2017, 375: 183-201.
[7] QIAN Y H, LIANG J Y, YAO Y Y, et al. MGRS: A Multi-granulation Rough Set. Information Sciences, 2010, 180(6): 949-970.
[8] QIAN Y H, LIANG J Y, DANG C Y. Incomplete Multigranulation Rough Set. IEEE Transactions on Systems, Man, and Cybernetics(Systems and Humans), 2010, 40(2): 420-431.
[9] QIAN Y H, LI S Y, LIANG J Y, et al. Pessimistic Rough Set Based Decisions: A Multigranulation Fusion Strategy. Information Sciences, 2014, 264: 196-210.
[10] 陈静雯,马福民,张腾飞,等.基于最大粒的悲观邻域多粒度粗糙集规则获取算法.模式识别与人工智能, 2017, 30(11): 1048-1056.
(CHEN J W, MA F M, ZHANG T F, et al. Rule Acquisition Algorithm for Neighborhood Multi-granularity Rough Sets Based on Maximal Granule. Pattern Recognition and Artificial Intelligence, 2017, 30(11): 1048-1056.)
[11] ATANASSOV K T. Intuitionistic Fuzzy Sets. Fuzzy Sets and Systems, 1986, 20(1): 87-96.
[12] ATANASSOV K T. More on Intuitionistic Fuzzy Sets. Fuzzy Sets and Systems, 1989, 33(1): 37-45.
[13] ZADEH L A. Fuzzy Sets. Information and Control, 1965, 8(3): 338-353.
[14] BORAN F E, GENC S, KURT M, et al. A Multi-criteria Intuitionistic Fuzzy Group Decision Making for Supplier Selection with TOPSIS Method. Expert Systems with Applications, 2009, 36(8): 11363-11368.
[15] WANG C Y, CHEN S M. Multiple Attribute Decision Making Based on Interval-Valued Intuitionistic Fuzzy Sets, Linear Programming Methodology, and the Extended TOPSIS Method. Information Sciences, 2017, 397/398: 155-167.
[16] WU T, LIU X W, LIU F. An Interval Type-2 Fuzzy TOPSIS Model for Large Scale Group Decision Making Problems with Social Network Information. Information Sciences, 2018, 432: 392-410.
[17] LIANG D C, LIU D. Deriving Three-Way Decisions from Intuitio-nistic Fuzzy Decision-Theoretic Rough Sets. Information Sciences, 2015, 300: 28-48.
[18] XU Z S, ZHAO N. Information Fusion for Intuitionistic Fuzzy Decision Making: An Overview. Information Fusion, 2016, 28: 10-23.
[19] HUANG B, LI H X, FENG G F, et al. Inclusion Measure-Based Multi-granulation Intuitionistic Fuzzy Decision-Theoretic Rough Sets and Their Application to ISSA. Knowledge-Based Systems, 2017, 138: 220-231.
[20] NGUYEN X T, VAN NGUYEN D. Support Intuitionistic Fuzzy Set: A New Concept For Soft Computing. International Journal of Intelligent Systems and Applications, 2015, 4: 11-16.
[21] 李 佳,梁吉业,庞天杰.基于加权α优势关系的多属性决策排序方法.模式识别与人工智能, 2017, 30(8): 761-768.
(LI J, LIANG J Y, PANG T J. Sorting Method of Multi-attribute Decision Making Based on Weighted α Dominance Relation. Pa-ttern Recognition and Artificial Intelligence, 2017, 30(8): 761-768.)
[22] WAN S P, WANG F, DONG J Y. A Preference Degree for Intui-tionistic Fuzzy Values and Application to Multi-attribute Group Decision Making. Information Sciences, 2016, 370/371: 127-146.
[23] ZHANG L, ZHAN J M, XU Z S. Covering-Based Generalized IF Rough Sets with Applications to Multi-attribute Decision-Making. Information Sciences, 2019, 478: 275-302.
[24] SUN B Z, MA W M, QIAN Y H. Multi-granulation Fuzzy Rough Set over Two Universes and Its Application to Decision Making. Knowledge-Based Systems, 2017, 123: 61-74.
[25] SUN B Z, MA W M, CHEN X T, et al. Heterogeneous Multi-granulation Fuzzy Rough Set-Based Multiple Attribute Group Decision Making with Heterogeneous Preference Information. Compu-ters and Industrial Engineering, 2018, 122: 24-38.
[26] SUN B Z, MA W M, CHEN X T. Variable Precision Multi-granulation Rough Fuzzy Set Approach to Multiple Attribute Group Decision-Making Based on λ-Similarity Relation. Computers and Industrial Engineering, 2019, 127: 326-343.
[27] ZHAN J M, SUN B Z, ALCANTUD J C R. Covering Based Multi-granulation (I,T)-Fuzzy Rough Set Models and Applications in Multi-attribute Group Decision-Making. Information Sciences, 2019,
476: 290-318.
[28] 杨 勇,梁晨成.Support-Intuitionistic模糊集集成算子及其决策应用.计算机工程, 2017, 43(1): 207-212.
(YANG Y, LIANG C C. Aggregation Operators of Support-In-tuitionistic Fuzzy Sets and Their Applications in Decision Making. Computer Engineering, 2017, 43(1): 207-212.) |