We propose a formal framework for interpretable machine learning. Combining elements from statistical learning, causal interventionism, and decision theory, we design an idealised explanation game in which players collaborate to find the best explanation(s) for a given algorithmic prediction. Through an iterative procedure of questions and answers, the players establish a three-dimensional Pareto frontier that describes the optimal trade-offs between explanatory accuracy, simplicity, and relevance. Multiple rounds are played at different levels of abstraction, allowing the players to explore overlapping causal patterns of variable granularity and scope. We characterise the conditions under which such a game is almost surely guaranteed to co...
The crucial role played by interpretability in many practical scenarios has led a large part of the ...
The importance of explaining the outcome of a machine learning model, especially a black-box model, ...
In order to integrate machine learning into human decision-making in a useful way, we must trust mac...
International audienceA number of techniques have been proposed to explain a machine learning model’...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
In the last decade, machine learning evolved from a sub-field of computer science into one of the mo...
We take inspiration from the study of human explanation to inform the design and evaluation of inter...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
Introduction: To foster usefulness and accountability of machine learning (ML), it is essential to e...
In this review, we examine the problem of designing interpretable and explainable machine learning m...
Explainable artificial intelligence and interpretable machine learning are research fields growing i...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
To foster usefulness and accountability of machine learning (ML), it is essential to explain a model...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
The crucial role played by interpretability in many practical scenarios has led a large part of the ...
The importance of explaining the outcome of a machine learning model, especially a black-box model, ...
In order to integrate machine learning into human decision-making in a useful way, we must trust mac...
International audienceA number of techniques have been proposed to explain a machine learning model’...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
In the last decade, machine learning evolved from a sub-field of computer science into one of the mo...
We take inspiration from the study of human explanation to inform the design and evaluation of inter...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
Introduction: To foster usefulness and accountability of machine learning (ML), it is essential to e...
In this review, we examine the problem of designing interpretable and explainable machine learning m...
Explainable artificial intelligence and interpretable machine learning are research fields growing i...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
To foster usefulness and accountability of machine learning (ML), it is essential to explain a model...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
The crucial role played by interpretability in many practical scenarios has led a large part of the ...
The importance of explaining the outcome of a machine learning model, especially a black-box model, ...
In order to integrate machine learning into human decision-making in a useful way, we must trust mac...