Random forests have proved to be very effective classifiers, which can achieve very high accuracies. Although a number of papers have discussed the use of fuzzy sets for coping with uncertain data in decision tree learning, fuzzy random forests have not been particularly investigated in the fuzzy community. In this paper, we first propose a simple method for generating fuzzy decision trees by creating fuzzy partitions for continuous variables during the learning phase. Then, we discuss how the method can be used for generating forests of fuzzy decision trees. Finally, we show how these fuzzy random forests achieve accuracies higher than two fuzzy rule-based classifiers recently proposed in the literature. Also, we highlight how fuzzy random...
International audienceIn this paper we present a study on the random forest (RF) family of ensemble ...
This paper introduces a novel Fuzzy Numeric Inference Strategy (FNIS) which induces fuzzy trees that...
Random forests works by averaging several predictions of de-correlated trees. We show a conceptually...
Following Breiman’s methodology, we propose a multi-classifier based on a “forest ” of randomly gene...
Random forests are currently considered among the most accurate and efficient classifiers. Moreover,...
AbstractWhen individual classifiers are combined appropriately, a statistically significant increase...
Part 7: DecisionsInternational audienceIn this paper a new classification solution which joins C–Fuz...
Part 3: Data Analysis and Information RetrievalInternational audienceCluster–Context Fuzzy Decision ...
This paper proposes a framework which consists of a novel fuzzy inference algorithm to generate fuzz...
Random forests have been introduced by Leo Breiman (2001) as a new learning algorithm, extend-ing th...
International audienceIn this paper, a study is presented to explore ensembles of fuzzy decision tre...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Decision trees are most often made using the heuristic that a series of locally optimal decisions yi...
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquis...
International audienceIn this paper we present a study on the random forest (RF) family of ensemble ...
This paper introduces a novel Fuzzy Numeric Inference Strategy (FNIS) which induces fuzzy trees that...
Random forests works by averaging several predictions of de-correlated trees. We show a conceptually...
Following Breiman’s methodology, we propose a multi-classifier based on a “forest ” of randomly gene...
Random forests are currently considered among the most accurate and efficient classifiers. Moreover,...
AbstractWhen individual classifiers are combined appropriately, a statistically significant increase...
Part 7: DecisionsInternational audienceIn this paper a new classification solution which joins C–Fuz...
Part 3: Data Analysis and Information RetrievalInternational audienceCluster–Context Fuzzy Decision ...
This paper proposes a framework which consists of a novel fuzzy inference algorithm to generate fuzz...
Random forests have been introduced by Leo Breiman (2001) as a new learning algorithm, extend-ing th...
International audienceIn this paper, a study is presented to explore ensembles of fuzzy decision tre...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Decision trees are most often made using the heuristic that a series of locally optimal decisions yi...
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquis...
International audienceIn this paper we present a study on the random forest (RF) family of ensemble ...
This paper introduces a novel Fuzzy Numeric Inference Strategy (FNIS) which induces fuzzy trees that...
Random forests works by averaging several predictions of de-correlated trees. We show a conceptually...