Decision trees are popular Classification and Regression tools and, when small-sized, easy to interpret. Traditionally, a greedy approach has been used to build the trees, yielding a very fast training process; however, controlling sparsity (a proxy for interpretability) is challenging. In recent studies, optimal decision trees, where all decisions are optimized simultaneously, have shown a better learning performance, especially when oblique cuts are implemented. In this paper, we propose a continuous optimization approach to build sparse optimal classification trees, based on oblique cuts, with the aim of using fewer predictor variables in the cuts as well as along the whole tree. Both types of sparsity, namely local and global, are model...
Due to the nonlinear but highly interpretable representations,decision tree (DT) models have signifi...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
We design efficient on-line algorithms that predict nearly as well as the best pruning of a planar d...
Sparse decision tree optimization has been one of the most fundamental problems in AI since its ince...
Classication and Regression Trees (CART) are a method of structured prediction widely used in machin...
Regression trees are one of the oldest forms of AI models, and their predictions can be made without...
Decision tree optimization is notoriously difficult from a computational perspective but essential f...
Decision trees have attracted much attention during the past decades. Previous decision trees includ...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
In this paper, we present methods for learning and pruning oblique decision trees, We propose a new ...
Decision tree algorithms have been among the most popular algorithms for interpretable (transparent)...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
Decision trees in random forests use a single feature in non-leaf nodes to split the data. Such spli...
International audienceThe random forests method is one of the most successful ensemble methods. Howe...
Due to the nonlinear but highly interpretable representations,decision tree (DT) models have signifi...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
We design efficient on-line algorithms that predict nearly as well as the best pruning of a planar d...
Sparse decision tree optimization has been one of the most fundamental problems in AI since its ince...
Classication and Regression Trees (CART) are a method of structured prediction widely used in machin...
Regression trees are one of the oldest forms of AI models, and their predictions can be made without...
Decision tree optimization is notoriously difficult from a computational perspective but essential f...
Decision trees have attracted much attention during the past decades. Previous decision trees includ...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
In this paper, we present methods for learning and pruning oblique decision trees, We propose a new ...
Decision tree algorithms have been among the most popular algorithms for interpretable (transparent)...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
Decision trees in random forests use a single feature in non-leaf nodes to split the data. Such spli...
International audienceThe random forests method is one of the most successful ensemble methods. Howe...
Due to the nonlinear but highly interpretable representations,decision tree (DT) models have signifi...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
We design efficient on-line algorithms that predict nearly as well as the best pruning of a planar d...