As a novel architecture of a fuzzy decision tree constructed on fuzzy rules, the fuzzy rule-based decision tree (FRDT) achieved better performance in terms of both classification accuracy and the size of the resulted decision tree than other classical decision trees such as C4.5, LADtree, BFtree, SimpleCart and NBTree. The concept of Z-number extends the classical fuzzy number to model both uncertain and partial reliable information. Z-numbers have significant potential in rule-based systems due to their strong representation capability. This paper designs a Z-number-valued rulebased decision tree (ZRDT) and provides the learning algorithm. Firstly, the information gain is used to replace the fuzzy confidence in FRDT to select featur...
Classification as a data mining materiel is the process of assigning entities to an already defined ...
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
summary:Fuzzy data mining by means of the fuzzy decision tree method enables the construction of a s...
A Z-number is very powerful in describing imperfect information, in which fuzzy numbers are paired s...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Multi-Attribute Decision Making (MADM) process is the most well-known branch of decision making and ...
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquis...
This paper introduces a novel Fuzzy Numeric Inference Strategy (FNIS) which induces fuzzy trees that...
Zadeh introduced the concept of Z-number to provide a basis for computation with numbers that are no...
In this paper, a new method of fuzzy decision trees called soft decision trees (SDT) is presented. T...
Decision tree induction is one of useful approaches for extracting classification knowledge from set...
Multiple Criteria Decision Making (MCDM) problems always involve uncertainty and vague values since ...
There are numerous studies about Z-numbers since its inception in 2011. Because Z-number concept ref...
Decision science has a wide range of applications in daily life. Decision information is usually inc...
The paper is devoted to the problem of multi criteria decision making under linguistic uncertainty. ...
Classification as a data mining materiel is the process of assigning entities to an already defined ...
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
summary:Fuzzy data mining by means of the fuzzy decision tree method enables the construction of a s...
A Z-number is very powerful in describing imperfect information, in which fuzzy numbers are paired s...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Multi-Attribute Decision Making (MADM) process is the most well-known branch of decision making and ...
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquis...
This paper introduces a novel Fuzzy Numeric Inference Strategy (FNIS) which induces fuzzy trees that...
Zadeh introduced the concept of Z-number to provide a basis for computation with numbers that are no...
In this paper, a new method of fuzzy decision trees called soft decision trees (SDT) is presented. T...
Decision tree induction is one of useful approaches for extracting classification knowledge from set...
Multiple Criteria Decision Making (MCDM) problems always involve uncertainty and vague values since ...
There are numerous studies about Z-numbers since its inception in 2011. Because Z-number concept ref...
Decision science has a wide range of applications in daily life. Decision information is usually inc...
The paper is devoted to the problem of multi criteria decision making under linguistic uncertainty. ...
Classification as a data mining materiel is the process of assigning entities to an already defined ...
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
summary:Fuzzy data mining by means of the fuzzy decision tree method enables the construction of a s...