Decision trees are a widely used knowledge representation in machine learning. However, one of their main drawbacks is the inherent replication of isomorphic subtrees, as a result of which the produced classifiers might become too large to be comprehensible by the human experts that have to validate them. Alternatively, decision diagrams, a generalization of decision trees taking on the form of a rooted, acyclic digraph instead of a tree, have occasionally been suggested as a potentially more compact representation. Their application in machine learning has nonetheless been criticized, because the theoretical size advantages of subgraph sharing did not always directly materialize in the relatively scarce reported experiments on real-world d...
Abstract—Researchers in machine learning use decision trees, production rules, and decision graphs f...
Accuracy and comprehensibility are two important criteria when developing decision support systems f...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
Decision trees are a widely used knowledge representation in machine learning. However, one of their...
Decision trees are a widely used knowledge representation in machine learn-ing. However, one of thei...
One of the key decisions financial institutions have to make as part of their daily operations is to...
Motivated by the need to understand the behaviour of complex machine learning (ML) models, there has...
Decision diagrams for classification have some notable advantages over decision trees, as their inte...
A lot of decision systems work internally using different forms of decision rules. In our experiment...
We propose an heuristic algorithm that induces decision graphs from training sets using Rissanen&apo...
Machine learning is now in a state to get major industrial applications. The most important applicat...
The data mining community is focused on a variety of methods and algorithms to manipulate incomplete...
Abstract. We evaluate the power of decision tables as a hypothesis space for supervised learning alg...
From its nature, decision-making processes and classi-fication tasks are domains, where decision tre...
Claims about the interpretability of decision trees can be traced back to the origins of machine lea...
Abstract—Researchers in machine learning use decision trees, production rules, and decision graphs f...
Accuracy and comprehensibility are two important criteria when developing decision support systems f...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
Decision trees are a widely used knowledge representation in machine learning. However, one of their...
Decision trees are a widely used knowledge representation in machine learn-ing. However, one of thei...
One of the key decisions financial institutions have to make as part of their daily operations is to...
Motivated by the need to understand the behaviour of complex machine learning (ML) models, there has...
Decision diagrams for classification have some notable advantages over decision trees, as their inte...
A lot of decision systems work internally using different forms of decision rules. In our experiment...
We propose an heuristic algorithm that induces decision graphs from training sets using Rissanen&apo...
Machine learning is now in a state to get major industrial applications. The most important applicat...
The data mining community is focused on a variety of methods and algorithms to manipulate incomplete...
Abstract. We evaluate the power of decision tables as a hypothesis space for supervised learning alg...
From its nature, decision-making processes and classi-fication tasks are domains, where decision tre...
Claims about the interpretability of decision trees can be traced back to the origins of machine lea...
Abstract—Researchers in machine learning use decision trees, production rules, and decision graphs f...
Accuracy and comprehensibility are two important criteria when developing decision support systems f...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...