This paper combines interval-valued intuitionistic fuzzy sets and rough sets.It studies rougheness in interval-valued intuitionistic fuzzy sets and proposes one kind of interval-valued intuitionistic fuzzy-rough sets ...This paper combines interval-valued intuitionistic fuzzy sets and rough sets.It studies rougheness in interval-valued intuitionistic fuzzy sets and proposes one kind of interval-valued intuitionistic fuzzy-rough sets models under the equivalence relation in crisp sets.That extends the classical rough set defined by Pawlak.展开更多
With granular computing point of view,this paper first presents a novel rough set model with a multigranulation view,called pessimistic rough decision,where set approximations are defined through using consistent gran...With granular computing point of view,this paper first presents a novel rough set model with a multigranulation view,called pessimistic rough decision,where set approximations are defined through using consistent granules among multiple granular spaces on the universe.Then,we investigate several important properties of the pessimistic rough decision model.With introduction of the rough set model,we have developed two types of multigranulation rough sets(MGRS):optimistic rough decision and pessimistic rough decision. These multigranulation rough set models provide a kind of effective approach for problem solving in the context of multi granulations.展开更多
Knowledge-based modeling is a trend in complex system modeling technology. To extract the process knowledge from an information system, an approach of knowledge modeling based on interval-valued fuzzy rough set is pre...Knowledge-based modeling is a trend in complex system modeling technology. To extract the process knowledge from an information system, an approach of knowledge modeling based on interval-valued fuzzy rough set is presented in this paper, in which attribute reduction is a key to obtain the simplified knowledge model. Through defining dependency and inclusion functions, algorithms for attribute reduction and rule extraction are obtained. The approximation inference plays an important role in the development of the fuzzy system. To improve the inference mechanism, we provide a method of similaritybased inference in an interval-valued fuzzy environment. Combining the conventional compositional rule of inference with similarity based approximate reasoning, an inference result is deduced via rule translation, similarity matching, relation modification, and projection operation. This approach is applied to the problem of predicting welding distortion in marine structures, and the experimental results validate the effectiveness of the proposed methods of knowledge modeling and similarity-based inference.展开更多
为了探索区间二型模糊背景下的多属性群决策方法,以多粒度概率粗糙集为基础,结合MULTIMOORA(Multi-Objective Optimization by Ratio Analysis Plus the Full Multi-Plicative Form)与证据融合理论,发展了一种基于区间二型模糊信息的多...为了探索区间二型模糊背景下的多属性群决策方法,以多粒度概率粗糙集为基础,结合MULTIMOORA(Multi-Objective Optimization by Ratio Analysis Plus the Full Multi-Plicative Form)与证据融合理论,发展了一种基于区间二型模糊信息的多粒度证据融合决策模型.首先,提出多粒度区间二型模糊概率粗糙集模型;然后,通过离差最大化法和熵权法计算决策者权重和属性权重,依据多粒度概率粗糙集和MULTIMOORA法建立区间二型模糊多属性群决策模型,通过源自D-S证据理论的证据融合方法融合得出决策结果.通过钢铁行业耗能的实例,证明提出方法的可行性与有效性,总体上,提出的决策模型具备一定的容错力,有助于获得强解释力的稳健型决策结果.展开更多
多粒度是近年来粗糙集领域研究的一个热点方向,而粒度约简是其中的一个核心问题。为了使得多粒度粗糙集能够用于处理连续型数据,引入模糊概念,构建了基于模糊等价关系的悲观多粒度模糊粗糙集模型,并进一步给出了粒度重要度的度量方法,...多粒度是近年来粗糙集领域研究的一个热点方向,而粒度约简是其中的一个核心问题。为了使得多粒度粗糙集能够用于处理连续型数据,引入模糊概念,构建了基于模糊等价关系的悲观多粒度模糊粗糙集模型,并进一步给出了粒度重要度的度量方法,设计一种基于启发式的粒度约简算法。以UCI(University of California Irvine)中3组数据集进行分析,实验结果表明所设计的算法能够在保持分类准确率不发生较大变化的情况下约去冗余的粒结构。展开更多
基金supported by grants from the National Natural Science Foundation of China(Nos.10971185 and 10971186)the Natural Science Foundation of Fujiang Province in China(No.2008F5066).
文摘This paper combines interval-valued intuitionistic fuzzy sets and rough sets.It studies rougheness in interval-valued intuitionistic fuzzy sets and proposes one kind of interval-valued intuitionistic fuzzy-rough sets models under the equivalence relation in crisp sets.That extends the classical rough set defined by Pawlak.
基金supported by grants from the National Natural Science Foundation of China(Nos.60903110, 60773133 and 70971080)the Natural Science Foundation of Shanxi Province in China(Nos.2009021017-1, 2008011038).
文摘With granular computing point of view,this paper first presents a novel rough set model with a multigranulation view,called pessimistic rough decision,where set approximations are defined through using consistent granules among multiple granular spaces on the universe.Then,we investigate several important properties of the pessimistic rough decision model.With introduction of the rough set model,we have developed two types of multigranulation rough sets(MGRS):optimistic rough decision and pessimistic rough decision. These multigranulation rough set models provide a kind of effective approach for problem solving in the context of multi granulations.
基金supported by 2013 Comprehensive Reform Pilot of Marine Engineering Specialty(No.ZG0434)
文摘Knowledge-based modeling is a trend in complex system modeling technology. To extract the process knowledge from an information system, an approach of knowledge modeling based on interval-valued fuzzy rough set is presented in this paper, in which attribute reduction is a key to obtain the simplified knowledge model. Through defining dependency and inclusion functions, algorithms for attribute reduction and rule extraction are obtained. The approximation inference plays an important role in the development of the fuzzy system. To improve the inference mechanism, we provide a method of similaritybased inference in an interval-valued fuzzy environment. Combining the conventional compositional rule of inference with similarity based approximate reasoning, an inference result is deduced via rule translation, similarity matching, relation modification, and projection operation. This approach is applied to the problem of predicting welding distortion in marine structures, and the experimental results validate the effectiveness of the proposed methods of knowledge modeling and similarity-based inference.
文摘为了探索区间二型模糊背景下的多属性群决策方法,以多粒度概率粗糙集为基础,结合MULTIMOORA(Multi-Objective Optimization by Ratio Analysis Plus the Full Multi-Plicative Form)与证据融合理论,发展了一种基于区间二型模糊信息的多粒度证据融合决策模型.首先,提出多粒度区间二型模糊概率粗糙集模型;然后,通过离差最大化法和熵权法计算决策者权重和属性权重,依据多粒度概率粗糙集和MULTIMOORA法建立区间二型模糊多属性群决策模型,通过源自D-S证据理论的证据融合方法融合得出决策结果.通过钢铁行业耗能的实例,证明提出方法的可行性与有效性,总体上,提出的决策模型具备一定的容错力,有助于获得强解释力的稳健型决策结果.
文摘多粒度是近年来粗糙集领域研究的一个热点方向,而粒度约简是其中的一个核心问题。为了使得多粒度粗糙集能够用于处理连续型数据,引入模糊概念,构建了基于模糊等价关系的悲观多粒度模糊粗糙集模型,并进一步给出了粒度重要度的度量方法,设计一种基于启发式的粒度约简算法。以UCI(University of California Irvine)中3组数据集进行分析,实验结果表明所设计的算法能够在保持分类准确率不发生较大变化的情况下约去冗余的粒结构。