Ensemble methods are popular learning methods that usually increase the predictive accuracy of a classifier though at the cost of interpretability and insight in the decision process. In this paper we aim to overcome this issue of comprehensibility by learning a single decision tree that approximates an ensemble of decision trees. The new model is obtained by exploiting the class distributions predicted by the ensemble. These are employed to compute heuristics for deciding which tests are to be used in the new tree. As such we acquire a model that is able to give insight in the decision process, while being more accurate than the single model directly learned on the data. The proposed method is experimentally evaluated on a large number of ...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
Ensemble methods have shown to be more effective than monolithic classifiers, in particular when div...
In real world situations every model has some weaknesses and will make errors on training data. Give...
Ensemble methods are supervised learning algorithms that provide highly accurate solutions by train...
Decision trees are among the most effective and interpretable classification algorithms while ensemb...
One of the general techniques for improving classification accuracy is learning ensembles of classif...
An ensemble is viewed as a machine learning system that combines multiple models to work collectivel...
Abstract. Ensemble methods are able to improve the predictive performance of many base classifiers. ...
Classification is a process where a classifier predicts a class label to an object using the set of ...
When predictive modeling requires comprehensible models, most data miners will use specialized techn...
Design of ensemble classifiers involves three factors: 1) a learning algorithm to produce a classifi...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Decision tree classifiers have been proved to be among the most interpretable models due to their in...
Machine learning methods can be used for estimating the class membership probability of an observati...
Models obtained by decision tree induction techniques excel in being interpretable. However, they ca...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
Ensemble methods have shown to be more effective than monolithic classifiers, in particular when div...
In real world situations every model has some weaknesses and will make errors on training data. Give...
Ensemble methods are supervised learning algorithms that provide highly accurate solutions by train...
Decision trees are among the most effective and interpretable classification algorithms while ensemb...
One of the general techniques for improving classification accuracy is learning ensembles of classif...
An ensemble is viewed as a machine learning system that combines multiple models to work collectivel...
Abstract. Ensemble methods are able to improve the predictive performance of many base classifiers. ...
Classification is a process where a classifier predicts a class label to an object using the set of ...
When predictive modeling requires comprehensible models, most data miners will use specialized techn...
Design of ensemble classifiers involves three factors: 1) a learning algorithm to produce a classifi...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Decision tree classifiers have been proved to be among the most interpretable models due to their in...
Machine learning methods can be used for estimating the class membership probability of an observati...
Models obtained by decision tree induction techniques excel in being interpretable. However, they ca...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
Ensemble methods have shown to be more effective than monolithic classifiers, in particular when div...
In real world situations every model has some weaknesses and will make errors on training data. Give...