Motivated by the need to understand the behaviour of complex machine learning (ML) models, there has been recent interest in learning optimal (or sub-optimal) decision trees (DTs). This interest is explained by the fact that DTs are widely regarded as interpretable by human decision makers. An alternative to DTs are Binary Decision Diagrams (BDDs), which can be deemed interpretable. Compared to DTs, and despite a fixed variable order, BDDs offer the advantage of more compact representations in practice, due to node sharing. Moreover, there is also extensive experience in the efficient manipulation of BDDs. Our work proposes preliminary inroads in two main directions: (a) proposing a SAT-based model for computing a decision tree as the small...
[[abstract]]We present methods to generate a Binary Decision Diagram (BDD) with minimum expected pat...
Reduced ordered binary decision diagrams (OBDD's) are nowadays the state-of-the-art representation s...
We propose to make use of ordered binary decision diagrams (OBDDs) as a means of realizing knowledge...
International audienceMotivated by the need to understand the behaviour of complex machine learning ...
International audienceThe growing interest in explainable artificial intelligence (XAI) for critical...
Decision trees are a widely used knowledge representation in machine learning. However, one of their...
We propose an heuristic algorithm that induces decision graphs from training sets using Rissanen&apo...
Decision trees are a widely used knowledge representation in machine learn-ing. However, one of thei...
Decision diagrams for classification have some notable advantages over decision trees, as their inte...
Design of digital systems is based on various specifications of Boolean functions, most often in a f...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
We present methods to generate a Binary Decision Diagram (BDD) with minimum expected path length. A ...
Machine learning (ML) is ubiquitous in modern life. Since it is being deployed in technologies that ...
Conference postponed to 2021 (COVID19)International audienceAny Boolean function corresponds with a ...
[[abstract]]This paper proposes a new approach that successfully finds the optimal variable ordering...
[[abstract]]We present methods to generate a Binary Decision Diagram (BDD) with minimum expected pat...
Reduced ordered binary decision diagrams (OBDD's) are nowadays the state-of-the-art representation s...
We propose to make use of ordered binary decision diagrams (OBDDs) as a means of realizing knowledge...
International audienceMotivated by the need to understand the behaviour of complex machine learning ...
International audienceThe growing interest in explainable artificial intelligence (XAI) for critical...
Decision trees are a widely used knowledge representation in machine learning. However, one of their...
We propose an heuristic algorithm that induces decision graphs from training sets using Rissanen&apo...
Decision trees are a widely used knowledge representation in machine learn-ing. However, one of thei...
Decision diagrams for classification have some notable advantages over decision trees, as their inte...
Design of digital systems is based on various specifications of Boolean functions, most often in a f...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
We present methods to generate a Binary Decision Diagram (BDD) with minimum expected path length. A ...
Machine learning (ML) is ubiquitous in modern life. Since it is being deployed in technologies that ...
Conference postponed to 2021 (COVID19)International audienceAny Boolean function corresponds with a ...
[[abstract]]This paper proposes a new approach that successfully finds the optimal variable ordering...
[[abstract]]We present methods to generate a Binary Decision Diagram (BDD) with minimum expected pat...
Reduced ordered binary decision diagrams (OBDD's) are nowadays the state-of-the-art representation s...
We propose to make use of ordered binary decision diagrams (OBDDs) as a means of realizing knowledge...