The Random Forests ensemble predictor has proven to be well-suited for solving a multitudeof different prediction problems. In this thesis, we propose an extension to the Random Forestframework that allows Random Forests to be constructed for multi-output decision problemswith arbitrary combinations of classification and regression responses, with the goal ofincreasing predictive performance for such multi-output problems. We show that our methodfor combining decision tasks within the same decision tree reduces prediction error for mosttasks compared to single-output decision trees based on the same node impurity metrics, andprovide a comparison of different methods for combining such metrics.Program: Magisterutbildning i informati
Part 2: Classification – Pattern Recognition (CLASPR)International audienceIn this work a novel ense...
(A) Decision trees use tree representations to solve problems, in which leaves represent class label...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
The Random Forests ensemble predictor has proven to be well-suited for solving a multitudeof differe...
The aim of this paper is to propose a simple procedure that a priori determines a minimum number of ...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
peer reviewedWe adapt the idea of random projections applied to the out- put space, so as to enhance...
Abstract. Ensemble methods are able to improve the predictive performance of many base classifiers. ...
Abstract—We introduce a multiple instance learning algorithm based on randomized decision trees. Our...
Random Forests is a popular ensemble technique developed by Breiman (2001) which yields exceptional ...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Several studies have shown that combining machine learning models in an appropriate way will introdu...
Random forests are ensembles of randomized decision trees where diversity is created by injecting ra...
The capability to model unkown complex interactions between variables made machine learning a pervas...
International audienceIn this paper we present a study on the random forest (RF) family of ensemble ...
Part 2: Classification – Pattern Recognition (CLASPR)International audienceIn this work a novel ense...
(A) Decision trees use tree representations to solve problems, in which leaves represent class label...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
The Random Forests ensemble predictor has proven to be well-suited for solving a multitudeof differe...
The aim of this paper is to propose a simple procedure that a priori determines a minimum number of ...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
peer reviewedWe adapt the idea of random projections applied to the out- put space, so as to enhance...
Abstract. Ensemble methods are able to improve the predictive performance of many base classifiers. ...
Abstract—We introduce a multiple instance learning algorithm based on randomized decision trees. Our...
Random Forests is a popular ensemble technique developed by Breiman (2001) which yields exceptional ...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Several studies have shown that combining machine learning models in an appropriate way will introdu...
Random forests are ensembles of randomized decision trees where diversity is created by injecting ra...
The capability to model unkown complex interactions between variables made machine learning a pervas...
International audienceIn this paper we present a study on the random forest (RF) family of ensemble ...
Part 2: Classification – Pattern Recognition (CLASPR)International audienceIn this work a novel ense...
(A) Decision trees use tree representations to solve problems, in which leaves represent class label...
We propose a robust decision tree induction method that mitigates the problems of instability and p...