Decision diagrams for classification have some notable advantages over decision trees, as their internal connections can be determined at training time and their width is not bound to grow exponentially with their depth. Accordingly, decision diagrams are usually less prone to data fragmentation in internal nodes. However, the inherent complexity of training these classifiers acted as a long-standing barrier to their widespread adoption. In this context, we study the training of optimal decision diagrams (ODDs) from a mathematical programming perspective. We introduce a novel mixed-integer linear programming model for training and demonstrate its applicability for many datasets of practical importance. Further, we show how this model can be...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
Decision diagrams are compact graphical representations of Boolean functions originally introduced f...
Decision trees are a widely used knowledge representation in machine learning. However, one of their...
Motivated by the need to understand the behaviour of complex machine learning (ML) models, there has...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
Decision trees are a widely used knowledge representation in machine learn-ing. However, one of thei...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
<p>Decision diagrams are compact graphical representations of Boolean functions originally introduce...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
We propose an heuristic algorithm that induces decision graphs from training sets using Rissanen&apo...
Decision trees are among the most popular classification models in machine learning. Using greedy al...
Interpretable and fair machine learning models are required for many applications, such as credit as...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
Decision diagrams are compact graphical representations of Boolean functions originally introduced f...
Decision trees are a widely used knowledge representation in machine learning. However, one of their...
Motivated by the need to understand the behaviour of complex machine learning (ML) models, there has...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
Decision trees are a widely used knowledge representation in machine learn-ing. However, one of thei...
The use of decision diagrams has recently emerged as a viable general solution approach for solving ...
<p>Decision diagrams are compact graphical representations of Boolean functions originally introduce...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
We propose an heuristic algorithm that induces decision graphs from training sets using Rissanen&apo...
Decision trees are among the most popular classification models in machine learning. Using greedy al...
Interpretable and fair machine learning models are required for many applications, such as credit as...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
We encode the problem of learning the optimal decision tree of a given depth as an integer optimizat...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...