Decision trees (DTs) epitomize the ideal of interpretability of machine learning (ML) models. The interpretability of decision trees motivates explainability approaches by so-called intrinsic interpretability, and it is at the core of recent proposals for applying interpretable ML models in high-risk applications. The belief in DT interpretability is justified by the fact that explanations for DT predictions are generally expected to be succinct. Indeed, in the case of DTs, explanations correspond to DT paths. Since decision trees are ideally shallow, and so paths contain far fewer features than the total number of features, explanations in DTs are expected to be succinct, and hence interpretable. This paper offers both theoretical and expe...
Decision tree classifiers have been proved to be among the most interpretable models due to their in...
International audienceAbductive explanations take a central place in eXplainable Artificial Intellig...
Explanations in machine learning come in many forms, but a consensus regarding their desired propert...
Claims about the interpretability of decision trees can be traced back to the origins of machine lea...
Decision trees (DTs) epitomize what have become to be known as interpretable machine learning (ML) m...
The decision tree is one of the most popular and classical machine learning models from the 1980s. H...
The rapid rise of Artificial Intelligence (AI) and Machine Learning (ML) has invoked the need for ex...
In classification and forecasting with tabular data, one often utilizes tree-based models. Those can...
International audienceDecision lists (DLs) find a wide range of uses for classification problems in ...
The rapid rise of Artificial Intelligence (AI) and Machine Learning (ML) has invoked the need for ex...
The recent development of formal explainable AI has disputed the folklore claim that "decision trees...
We are interested in identifying the complexity of computing explanations of various types for a dec...
Decision tree classifiers have been proved to be among the most interpretable models due to their in...
Recent work has shown that not only decision trees (DTs) may not be interpretable but also proposed ...
International audienceRecent work has shown that not only decision trees (DTs) may not be interpreta...
Decision tree classifiers have been proved to be among the most interpretable models due to their in...
International audienceAbductive explanations take a central place in eXplainable Artificial Intellig...
Explanations in machine learning come in many forms, but a consensus regarding their desired propert...
Claims about the interpretability of decision trees can be traced back to the origins of machine lea...
Decision trees (DTs) epitomize what have become to be known as interpretable machine learning (ML) m...
The decision tree is one of the most popular and classical machine learning models from the 1980s. H...
The rapid rise of Artificial Intelligence (AI) and Machine Learning (ML) has invoked the need for ex...
In classification and forecasting with tabular data, one often utilizes tree-based models. Those can...
International audienceDecision lists (DLs) find a wide range of uses for classification problems in ...
The rapid rise of Artificial Intelligence (AI) and Machine Learning (ML) has invoked the need for ex...
The recent development of formal explainable AI has disputed the folklore claim that "decision trees...
We are interested in identifying the complexity of computing explanations of various types for a dec...
Decision tree classifiers have been proved to be among the most interpretable models due to their in...
Recent work has shown that not only decision trees (DTs) may not be interpretable but also proposed ...
International audienceRecent work has shown that not only decision trees (DTs) may not be interpreta...
Decision tree classifiers have been proved to be among the most interpretable models due to their in...
International audienceAbductive explanations take a central place in eXplainable Artificial Intellig...
Explanations in machine learning come in many forms, but a consensus regarding their desired propert...