In recent years there has been growing attention to interpretable machine learning models which can give explanatory insights on their behavior. Thanks to their interpretability, decision trees have been intensively studied for classification tasks, and due to the remarkable advances in mixed-integer programming (MIP), various approaches have been proposed to formulate the problem of training an Optimal Classification Tree (OCT) as a MIP model. We present a novel mixed-integer quadratic formulation for the OCT problem, which exploits the generalization capabilities of Support Vector Machines for binary classification. Our model, denoted as Margin Optimal Classification Tree (MARGOT), encompasses the use of maximum margin multivariate hyperp...
Optimal Classification Trees (OCTs) and Optimal Regression Trees (ORTs) promise to provide empirical...
Classification is a very useful statistical tool for information extraction. Among numerous classifi...
There has been a surge of interest in learning optimal decision trees using mixed-integer programs (...
In recent years there has been growing attention to interpretable machine learning models which can ...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
We propose a method for the classification of more than two classes, from high-dimensional features....
Abstract We introduce the idea that using optimal classification trees (OCTs) and opt...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
The increasing use of machine learning in high-stakes domains -- where people's livelihoods are impa...
This research has been partially supported by Spanish Ministerio de Ciencia e Innovacion, Agencia Es...
Interpretability is a growing concept in Machine Learning. Decision-making algorithms are more and m...
Optimal Classification Trees (OCTs) and Optimal Regression Trees (ORTs) promise to provide empirical...
Classification is a very useful statistical tool for information extraction. Among numerous classifi...
There has been a surge of interest in learning optimal decision trees using mixed-integer programs (...
In recent years there has been growing attention to interpretable machine learning models which can ...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
We propose a method for the classification of more than two classes, from high-dimensional features....
Abstract We introduce the idea that using optimal classification trees (OCTs) and opt...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
The increasing use of machine learning in high-stakes domains -- where people's livelihoods are impa...
This research has been partially supported by Spanish Ministerio de Ciencia e Innovacion, Agencia Es...
Interpretability is a growing concept in Machine Learning. Decision-making algorithms are more and m...
Optimal Classification Trees (OCTs) and Optimal Regression Trees (ORTs) promise to provide empirical...
Classification is a very useful statistical tool for information extraction. Among numerous classifi...
There has been a surge of interest in learning optimal decision trees using mixed-integer programs (...