The explainable AI literature contains multiple notions of what an explanation is and what desiderata explanations should satisfy. One implicit source of disagreement is how far the explanations should reflect real patterns in the data or the world. This disagreement underlies debates about other desiderata, such as how robust explanations are to slight perturbations in the input data. I argue that robustness is desirable to the extent that we’re concerned about finding real patterns in the world. The import of real patterns differs according to the problem context. In some contexts, non-robust explanations can constitute a moral hazard. By being clear about the extent to which we care about capturing real patterns, we can also determine w...
With the rise of deep neural networks, the challenge of explaining the predictions of these networks...
As artificial intelligence (AI) systems increasingly impact the society, it is important to design a...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
The explainable AI literature contains multiple notions of what an explanation is and what desiderat...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
In contrast with ad-hoc methods for eXplainable Artificial Intelligence (XAI), formal explainability...
This paper argues that there are two different types of causes that we can wish to understand when w...
Many explainability methods have been proposed as a means of understanding how a learned machine lea...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
A high-velocity paradigm shift towards Explainable Artificial Intelligence (XAI) has emerged in rece...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
The operations of deep networks are widely acknowledged to be inscrutable. The growing field of “Exp...
This article asks the question, ``what is reliable machine learning?'' As I intend to answer it, thi...
The last decade witnessed an ever-increasing stream of successes in Machine Learning (ML). These suc...
With the rise of deep neural networks, the challenge of explaining the predictions of these networks...
As artificial intelligence (AI) systems increasingly impact the society, it is important to design a...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
The explainable AI literature contains multiple notions of what an explanation is and what desiderat...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
In contrast with ad-hoc methods for eXplainable Artificial Intelligence (XAI), formal explainability...
This paper argues that there are two different types of causes that we can wish to understand when w...
Many explainability methods have been proposed as a means of understanding how a learned machine lea...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
A high-velocity paradigm shift towards Explainable Artificial Intelligence (XAI) has emerged in rece...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
The operations of deep networks are widely acknowledged to be inscrutable. The growing field of “Exp...
This article asks the question, ``what is reliable machine learning?'' As I intend to answer it, thi...
The last decade witnessed an ever-increasing stream of successes in Machine Learning (ML). These suc...
With the rise of deep neural networks, the challenge of explaining the predictions of these networks...
As artificial intelligence (AI) systems increasingly impact the society, it is important to design a...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...