A popular method in machine learning for supervised classification is a decision tree. In this work we propose a new framework to learn fuzzy decision trees using mathematical programming. More specifically, we encode the problem of constructing fuzzy decision trees using a Mixed Integer Linear Programming (MIP) model, which can be solved by any optimization solver. We compare the performance of our method with the performance of off-the-shelf decision tree algorithm CART and Fuzzy Inference Systems (FIS) using benchmark data-sets. Our initial results are promising and show the advantages of using non-crisp boundaries for improving classification accuracy on testing data
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
An approach to construct a new classifier called an intu-itionistic fuzzy decision tree is presented...
A popular method in machine learning for supervised classification is a decision tree. In this work ...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
This paper proposes a framework which consists of a novel fuzzy inference algorithm to generate fuzz...
This paper introduces a novel Fuzzy Numeric Inference Strategy (FNIS) which induces fuzzy trees that...
In this paper, a new method of fuzzy decision trees called soft decision trees (SDT) is presented. T...
Decision tree induction has been studied extensively in machine learning as a solution for classific...
International audienceIn inductive learning, to build decision trees is often arduous when there exi...
Decision tree is a dominating method of pattern classification. These trees amongst the machine lear...
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
An approach to construct a new classifier called an intu-itionistic fuzzy decision tree is presented...
A popular method in machine learning for supervised classification is a decision tree. In this work ...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
This paper proposes a framework which consists of a novel fuzzy inference algorithm to generate fuzz...
This paper introduces a novel Fuzzy Numeric Inference Strategy (FNIS) which induces fuzzy trees that...
In this paper, a new method of fuzzy decision trees called soft decision trees (SDT) is presented. T...
Decision tree induction has been studied extensively in machine learning as a solution for classific...
International audienceIn inductive learning, to build decision trees is often arduous when there exi...
Decision tree is a dominating method of pattern classification. These trees amongst the machine lear...
This chapter considers the soft computing approach called fuzzy decision trees (FDT), a form of clas...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
An approach to construct a new classifier called an intu-itionistic fuzzy decision tree is presented...