Fuzzy rough set-based attribute reduction using distance measures
C Wang, Y Huang, M Shao, X Fan - Knowledge-Based Systems, 2019 - Elsevier
Attribute reduction is one of the most important applications of fuzzy rough sets in machine
learning and pattern recognition. Most existing methods employ the intersection operation of …
learning and pattern recognition. Most existing methods employ the intersection operation of …
Feature selection based on neighborhood discrimination index
Feature selection is viewed as an important preprocessing step for pattern recognition,
machine learning, and data mining. Neighborhood is one of the most important concepts in …
machine learning, and data mining. Neighborhood is one of the most important concepts in …
Generalized picture distance measure and applications to picture fuzzy clustering
LH Son - Applied Soft Computing, 2016 - dl.acm.org
Display Omitted We focused on the clustering problem in picture fuzzy sets. A generalized
picture distance measure was proposed. A novel hierarchical picture clustering method …
picture distance measure was proposed. A novel hierarchical picture clustering method …
Feature subset selection based on fuzzy neighborhood rough sets
C Wang, M Shao, Q He, Y Qian, Y Qi - Knowledge-Based Systems, 2016 - Elsevier
Rough set theory has been extensively discussed in machine learning and pattern
recognition. It provides us another important theoretical tool for feature selection. In this …
recognition. It provides us another important theoretical tool for feature selection. In this …
Intuitionistic fuzzy rough set-based granular structures and attribute subset selection
Attribute subset selection is an important issue in data mining and information processing.
However, most automatic methodologies consider only the relevance factor between …
However, most automatic methodologies consider only the relevance factor between …
EDAS Method for Multi-Criteria Group Decision Making Based on Intuitionistic Fuzzy Rough Aggregation Operators
The primitive notions of rough sets and intuitionistic fuzzy set (IFS) are general mathematical
tools having the ability to handle the uncertain and imprecise knowledge easily. EDA …
tools having the ability to handle the uncertain and imprecise knowledge easily. EDA …
Generalized attribute reduct in rough set theory
Attribute reduction plays an important role in the areas of rough sets and granular
computing. Many kinds of attribute reducts have been defined in previous studies. However …
computing. Many kinds of attribute reducts have been defined in previous studies. However …
Intuitionistic fuzzy geometric interaction averaging operators and their application to multi-criteria decision making
This paper proposes some new geometric operations on intuitionistic fuzzy sets (IFSs)
based on probability non-membership (PN) function operator, probability membership (PM) …
based on probability non-membership (PN) function operator, probability membership (PM) …
The new extension of the MULTIMOORA method for sustainable supplier selection with intuitionistic linguistic rough numbers
Due to the increasing awareness of environmental and social issues, sustainable supplier
selection (SSS) becomes an important problem. In order to scientifically evaluation the SSS …
selection (SSS) becomes an important problem. In order to scientifically evaluation the SSS …
Intuitionistic fuzzy multigranulation rough sets
B Huang, C Guo, Y Zhuang, H Li, X Zhou - Information sciences, 2014 - Elsevier
Exploring rough sets from the perspective of multigranulation represents a promising
direction in rough set theory, where concepts are approximated by multiple granular …
direction in rough set theory, where concepts are approximated by multiple granular …