We characterize the best possible trade-off achievable when optimizing the construction of a decision tree with respect to both the worst and the expected cost. It is known that a decision tree achieving the minimum possible worst case cost can behave very poorly in expectation (even exponentially worse than the optimal), and the vice versa is also true. Led by applications where deciding for the right optimization criterion might not be easy, recently, several authors have focussed on the bicriteria optimization of decision trees. An unanswered fundamental question is about the best possible tradeoff achievable. Here we are able to sharply define the limits for such a task. More precisely, we show that for every ρ > 0 there is a decision t...
All currently known algorithms for learning decision trees are based on the paradigm of heuristic to...
The interest in algorithms for learning optimal decision trees (ODTs) has increased significantly in...
Interpretable and fair machine learning models are required for many applications, such as credit as...
We characterize the best possible trade-off achievable when optimizing the construction of a decisio...
In several applications of automatic diagnosis and active learning, a central problem is the evaluat...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
Construction algorithms of optimum and near-optimum decision trees are surveyed under two optimality...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
Assume we want to show that (a) the cost of any randomized decision tree computing a given Boolean f...
We study the problem of evaluating a discrete function by adaptively querying the values of its vari...
AbstractAssume we want to show that (a) the cost of any randomized decision tree computing a given B...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
All currently known algorithms for learning decision trees are based on the paradigm of heuristic to...
The interest in algorithms for learning optimal decision trees (ODTs) has increased significantly in...
Interpretable and fair machine learning models are required for many applications, such as credit as...
We characterize the best possible trade-off achievable when optimizing the construction of a decisio...
In several applications of automatic diagnosis and active learning, a central problem is the evaluat...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
Construction algorithms of optimum and near-optimum decision trees are surveyed under two optimality...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
Assume we want to show that (a) the cost of any randomized decision tree computing a given Boolean f...
We study the problem of evaluating a discrete function by adaptively querying the values of its vari...
AbstractAssume we want to show that (a) the cost of any randomized decision tree computing a given B...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
All currently known algorithms for learning decision trees are based on the paradigm of heuristic to...
The interest in algorithms for learning optimal decision trees (ODTs) has increased significantly in...
Interpretable and fair machine learning models are required for many applications, such as credit as...