In contrast with ad-hoc methods for eXplainable Artificial Intelligence (XAI), formal explainability offers important guarantees of rigor. However, formal explainability is hindered by poor scalability for some families of classifiers, the most significant being neural networks. As a result, there are concerns as to whether formal explainability might serve to complement other approaches in delivering trustworthy AI. This paper addresses the limitation of scalability of formal explainability, and proposes novel algorithms for computing formal explanations. The novel algorithm computes explanations by answering instead a number of robustness queries, and such that the number of such queries is at most linear on the number of features. Conseq...
With the rise of deep neural networks, the challenge of explaining the predictions of these networks...
In recent decades, artificial intelligence (AI) systems are becoming increasingly ubiquitous from lo...
The attempt to concretely define the concept of explainability in terms of other vaguely described n...
In contrast with ad-hoc methods for eXplainable Artificial Intelligence (XAI), formal explainability...
Explainable Artificial Intelligence (XAI) has experienced a significant growth over the last few yea...
Explainable AI was born as a pathway to allow humans to explore and understand the inner working of ...
The explainable AI literature contains multiple notions of what an explanation is and what desiderat...
The last decade witnessed an ever-increasing stream of successes in Machine Learning (ML). These suc...
We present VeriX, a system for producing optimal robust explanations and generating counterfactuals ...
Explainable AI was born as a pathway to allow humans to explore and understand the inner working of ...
As artificial intelligence (AI) systems increasingly impact the society, it is important to design a...
The opacity of some recent Machine Learning (ML) techniques have raised fundamental questions on the...
The deployment of systems of artificial intelligence (AI) in high-risk settings warrants the need fo...
The deployment of systems of artificial intelligence (AI) in high-risk settings warrants the need fo...
A high-velocity paradigm shift towards Explainable Artificial Intelligence (XAI) has emerged in rece...
With the rise of deep neural networks, the challenge of explaining the predictions of these networks...
In recent decades, artificial intelligence (AI) systems are becoming increasingly ubiquitous from lo...
The attempt to concretely define the concept of explainability in terms of other vaguely described n...
In contrast with ad-hoc methods for eXplainable Artificial Intelligence (XAI), formal explainability...
Explainable Artificial Intelligence (XAI) has experienced a significant growth over the last few yea...
Explainable AI was born as a pathway to allow humans to explore and understand the inner working of ...
The explainable AI literature contains multiple notions of what an explanation is and what desiderat...
The last decade witnessed an ever-increasing stream of successes in Machine Learning (ML). These suc...
We present VeriX, a system for producing optimal robust explanations and generating counterfactuals ...
Explainable AI was born as a pathway to allow humans to explore and understand the inner working of ...
As artificial intelligence (AI) systems increasingly impact the society, it is important to design a...
The opacity of some recent Machine Learning (ML) techniques have raised fundamental questions on the...
The deployment of systems of artificial intelligence (AI) in high-risk settings warrants the need fo...
The deployment of systems of artificial intelligence (AI) in high-risk settings warrants the need fo...
A high-velocity paradigm shift towards Explainable Artificial Intelligence (XAI) has emerged in rece...
With the rise of deep neural networks, the challenge of explaining the predictions of these networks...
In recent decades, artificial intelligence (AI) systems are becoming increasingly ubiquitous from lo...
The attempt to concretely define the concept of explainability in terms of other vaguely described n...