Abstract

In many practical situation, some of the attribute values for an object may be interval and set-valued. This paper introduces the interval and set-valued information systems and decision systems. According to the semantic relation of attribute values, interval and set-valued information systems can be classified into two categories: disjunctive (Type 1) and conjunctive (Type 2) systems. In this paper, we mainly focus on semantic interpretation of Type 1. Then, we define a new fuzzy preference relation and construct a fuzzy rough set model for interval and set-valued information systems. Moreover, based on the new fuzzy preference relation, the concepts of the significance measure of condition attributes and the relative significance measure of condition attributes are given in interval and set-valued decision information systems by the introduction of fuzzy positive region and the dependency degree. And on this basis, a heuristic algorithm for calculating fuzzy positive region reduction in interval and set-valued decision information systems is given. Finally, we give an illustrative example to substantiate the theoretical arguments. The results will help us to gain much more insights into the meaning of fuzzy rough set theory. Furthermore, it has provided a new perspective to study the attribute reduction problem in decision systems.

Highlights

  • Rough set theory, introduced by Pawlak in 1982, is a useful mathematic approach for dealing with uncertain, imprecise and incomplete information [1]

  • Based on the new fuzzy preference relation, the concepts of the significance measure of condition attributes and the relative significance measure of condition attributes are given in interval and set-valued decision information systems by the introduction of fuzzy positive region and the dependency degree

  • The definition of the significance measure of condition attributes and the relative significance measure of condition attributes are given in interval and set-valued decision information systems by the introduction of fuzzy positive region and the dependency degree

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Summary

Introduction

Rough set theory, introduced by Pawlak in 1982, is a useful mathematic approach for dealing with uncertain, imprecise and incomplete information [1]. The main objective of this paper is to introduce a fuzzy rough set model for interval and set-valued information systems by defining a fuzzy preference relation for interval and set-valued information systems. Dai et al [2] proposed a fuzzy rough set model for set-valued data and investigated the attribute reduction in set-valued information systems based on discernibility matrices and functions. Attribute reduction based on fuzzy rough set in interval and set-valued decision information systems has not been reported. The definition of the significance measure of condition attributes and the relative significance measure of condition attributes are given in interval and set-valued decision information systems by the introduction of fuzzy positive region and the dependency degree.

Interval and Set-Valued Information Systems
Fuzzy Preference Relation
Fuzzy Rough Set Model for Interval and Set-Valued Information Systems
Illustrative Example
Conclusions
Full Text
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