Dominance-based rough set approach to incomplete fuzzy information system

Although many extended rough set models have been successfully applied into the incomplete information system, most of them do not take the incomplete information system with initial fuzzy data into account. This paper thus presents a general framework for the study of dominance-based rough set model in the incomplete fuzzy information systems. First, the traditional dominance relation is expanded in the incomplete fuzzy information system. We then present the dominance-based rough approximations by the rough fuzzy technique. Finally, we propose two types of knowledge reductions, relative lower and upper approximate reducts, which can be used to induce simplified decision rules from the incomplete fuzzy decision table. We also present the judgement theorems and discernibility functions which describe how relative lower and upper approximate reducts can be calculated. We employ some numerical examples in this paper to substantiate the conceptual arguments.

[1]  Wei-Zhi Wu,et al.  Knowledge acquisition in incomplete fuzzy information systems via the rough set approach , 2003, Expert Syst. J. Knowl. Eng..

[2]  Li Pheng Khoo,et al.  A dominance-based rough set approach to Kansei Engineering in product development , 2009, Expert Syst. Appl..

[3]  Andrzej Skowron,et al.  Rudiments of rough sets , 2007, Inf. Sci..

[4]  Yanyong Guan,et al.  Set-valued information systems , 2006, Inf. Sci..

[5]  Han-Lin Li,et al.  Induction of multiple criteria optimal classification rules for biological and medical data , 2008, Comput. Biol. Medicine.

[6]  Xizhao Wang,et al.  Learning fuzzy rules from fuzzy samples based on rough set technique , 2007, Inf. Sci..

[7]  Yee Leung,et al.  Maximal consistent block technique for rule acquisition in incomplete information systems , 2003, Inf. Sci..

[8]  Alicja Mieszkowicz-Rolka,et al.  Fuzziness in Information Systems , 2003, RSKD.

[9]  Masahiro Inuiguchi,et al.  Fuzzy rough sets and multiple-premise gradual decision rules , 2006, Int. J. Approx. Reason..

[10]  Andrzej Skowron,et al.  Rough set methods in feature selection and recognition , 2003, Pattern Recognit. Lett..

[11]  Han Tong Loh,et al.  Applying rough sets to market timing decisions , 2004, Decis. Support Syst..

[12]  Salvatore Greco,et al.  Rough approximation by dominance relations , 2002, Int. J. Intell. Syst..

[13]  Wei-Zhi Wu,et al.  Attribute reduction based on evidence theory in incomplete decision systems , 2008, Inf. Sci..

[14]  Jusheng Mi,et al.  Incomplete information system andits optimal selections , 2004 .

[15]  Jing-Yu Yang,et al.  Dominance-based rough set approach and knowledge reductions in incomplete ordered information system , 2008, Inf. Sci..

[16]  Ming-Wen Shao,et al.  Dominance relation and rules in an incomplete ordered information system , 2005 .

[17]  LohHan Tong,et al.  Applying rough sets to market timing decisions , 2004 .

[18]  Janusz Zalewski,et al.  Rough sets: Theoretical aspects of reasoning about data , 1996 .

[19]  Zdzislaw Pawlak,et al.  Rough sets and intelligent data analysis , 2002, Inf. Sci..