A decision tree is one of the famous classifiers based on a recursive partitioning algorithm. This paper introduces the Boundary Expansion Algorithm (BEA) to improve a decision tree induction that deals with an imbalanced dataset. BEA utilizes all attributes to define non-splittable ranges. The computed means of all attributes for minority instances are used to find the nearest minority instance, which will be expanded along all attributes to cover a minority region. As a result, BEA can successfully cope with an imbalanced dataset comparing with C4.5, Gini, asymmetric entropy, top-down tree, and Hellinger distance decision tree on 25 imbalanced datasets from the UCI Repository
International audienceIn data mining, large differences in prior class probabilities known as the cl...
In recent years, a significant issue in classification is to handle a dataset containing imbalanced ...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
We propose a new variant of decision tree for imbal-anced classification. Decision trees use a greed...
Abstract:- Since the real-world datasets are often predominately composed of majority examples with ...
AbstractIt is the accuracy of classification that decides whether the algorithm is prior or not in g...
[[abstract]]The class imbalance problem is an important issue in classification of Data mining. Amon...
© 2012 IEEE.Learning classifiers with imbalanced data can be strongly biased toward the majority cla...
In this paper, we introduce an incremental induction of multivariate decision tree algorithm, called...
Several algorithms for induction of decision trees have been developed to solve problems with large ...
Part 4: Data Analysis and Information RetrievalInternational audienceDecision trees are considered t...
We propose a new decision tree algorithm, Class Confidence Proportion Decision Tree (CCPDT), which i...
In this paper, we introduce an incremental induction of multivariate decision tree algorithm, called...
Abstract. Learning in imbalanced datasets is a pervasive problem preva-lent in a wide variety of rea...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
In recent years, a significant issue in classification is to handle a dataset containing imbalanced ...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
We propose a new variant of decision tree for imbal-anced classification. Decision trees use a greed...
Abstract:- Since the real-world datasets are often predominately composed of majority examples with ...
AbstractIt is the accuracy of classification that decides whether the algorithm is prior or not in g...
[[abstract]]The class imbalance problem is an important issue in classification of Data mining. Amon...
© 2012 IEEE.Learning classifiers with imbalanced data can be strongly biased toward the majority cla...
In this paper, we introduce an incremental induction of multivariate decision tree algorithm, called...
Several algorithms for induction of decision trees have been developed to solve problems with large ...
Part 4: Data Analysis and Information RetrievalInternational audienceDecision trees are considered t...
We propose a new decision tree algorithm, Class Confidence Proportion Decision Tree (CCPDT), which i...
In this paper, we introduce an incremental induction of multivariate decision tree algorithm, called...
Abstract. Learning in imbalanced datasets is a pervasive problem preva-lent in a wide variety of rea...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
In recent years, a significant issue in classification is to handle a dataset containing imbalanced ...
International audienceIn data mining, large differences in prior class probabilities known as the cl...