[1] F. Fernndez-Riverola, F. Daz and J. M. Corchado, reducing the
memory size of a Fuzzy Case-Based reasoning system applying rough set
techniques, IEEE Transactions on Systems, Man and Cybernetics, Part C:
Applications and Reviews, 37(1) (2007), 138-146.
[2] Richard Jensen and Qiang Shen, Fuzzy-Rough Sets assisted attribute
selection, IEEE Transactions on Fuzzy Systems 15(1) (2007), 73-89.
[3] Gwanggil Jeon, Donghyung Kim and Jechang Jeong, Rough sets
attributes reduction based expert system in interlaced video
sequences, IEEE Transactions on Consumer Electronics 52 (4) (2006),
1348-1355.
[4] Marzena Kryszkiewicz, Rough set approach to incomplete information
systems, Information Sciences 112(1-4) (1998), 39-49.
[5] S. Mitra, M. Mitra and B. B. Chaudhuri, A rough-set-based
inference engine for ECG classification, IEEE Transactions on
Instrumentation and Measurement 55(6) (2006), 2198-2206.
[6] Z. Pawlak, Rough sets, International Journal of Computer and
Information Sciences 11 (1982), 341-356.
[7] Z. Pawlak, Rough Sets, Theoretical Aspects of Reasoning About
Data, Kluwer Academic Publishers, Boston, 1991.
[8] Z. Pawlak, Rough set approach to Knowledge-based decision support,
European Journal of Operational Research 99 (1997), 48-57.
[9] Z. Pawlak, Rough sets theory and its applications to data
analysis, Cybernetics and Systems: An International Journal 29(1)
(1998), 661-688.
[10] Z. Pawlak, Rough sets and intelligent data analysis, Information
Sciences 147(1-4) (2002), 1-12.
[11] Z. Pawlak and Andrzej Skowron, Rough sets and Boolean reasoning,
Information Sciences 177(1) (2007), 41-73.
[12] Wang Peizhuang and Li Hongxing, Fuzzy System Theory and Fuzzy
Computer, Science Press, China, 1996.
[13] L. B. Philip, Shafer-Dempster Reasoning with applications to
multisensor target identification systems, IEEE. Trans on System, Man
and Cybernetics SMC-17(6) 1987.
[14] G. Shafer, A Mathematical Theory of Evidence, Princeton
University Press, Princeton, 1976.
[15] Zhang Shichao, Several problems of uncertain reasoning, Computer
Engineering 4 (1992), 66-73.
[16] Wang Shitong, Chen Huiping, Zhao Yuehua and Qian Xu, etc,
Artificial Intelligence Tutorial, Publishing House of Electronics
Industry, Beijing, China, 2002.
[17] Zhang Wenxiu, Wu Weizhi, Liang Jiye and Li Deyu, Rough Set Theory
and Methods, Science Press, Beijing, Chinese, 2003.
[18] R. R. Yager, J. Kacprzyk and M. Fedrizzi, Advances in the
Dempster-Shafer Theory of Evidence, John Wiley &. Sons, INC, 1994.
[19] He You, Wang Guohong, Lu Dajin and Peng Yingning, Multisensor
Information Fusion with Applications, Publishing House of Electronics
Industry, Beijing, China, 2000.
[20] An Zeng, Dan Pan, Qi-Lun Zheng and Hong Peng, Knowledge
acquisition based on rough set theory and principal component
analysis, IEEE Transactions on Intelligent Systems and their
Applications 21(2) (2006), 78-85.
[21] Wei-Zhi Wu, Mei Zhang, Huai-Zu Li and Ju-Sheng Mi, Knowledge
reduction in random information systems via Dempster-Shafer theory of
evidence, Information Sciences 174(3-4) (2005), 143-164.
[22] Dai Zhi-Feng, Li Yuan-Xiang, He Guo-Liang, Tong Ya-La and Shen
Xian-Jun, Uncertain data management for wireless sensor networks using
rough set theory, International Conference on Wireless Communications,
Networking and Mobile Computing, (2006), 1-5.
[23] William Zhu, Topological approaches to covering rough sets,
Information Sciences 177(6) (2007), 1499-1508.