A significant drawback of eXplainable Artificial Intelligence (XAI) approaches is the assumption of feature independence. This paper focuses on integrating causal knowledge in XAI methods to increase trust and help users assess explanations' quality. We propose a novel extension to a widely used local and model-agnostic explainer that explicitly encodes causal relationships in the data generated around the input instance to explain. Extensive experiments show that our method achieves superior performance comparing the initial one for both the fidelity in mimicking the black-box and the stability of the explanations.Comment: Accepted for publication in ICAI 202
Necessity and sufficiency are the building blocks of all successful explanations. Yet despite their ...
Explaining the predictions of opaque machine learning algorithms is an important and challenging tas...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...
Artificial Intelligence (AI) is often an integral part of modern decision support systems (DSSs). Th...
Many applications of data-driven models demand transparency of decisions, especially in health care,...
A high-velocity paradigm shift towards Explainable Artificial Intelligence (XAI) has emerged in rece...
Modern machine learning methods allow for complex and in-depth analytics, but the predictive models ...
The rising popularity of explainable artificial intelligence (XAI) to understand high-performing bla...
A key impediment to the use of AI is the lacking of transparency, especially in safety/security crit...
Explainable Artificial Intelligence (XAI) has experienced a significant growth over the last few yea...
The rise of AI methods to make predictions and decisions has led to a pressing need for more explain...
Necessity and sufficiency are the building blocks of all successful explanations. Yet despite their ...
Since the introduction of the term explainable artificial intelligence (XAI), many contrasting defin...
Introduction: Many Explainable AI (XAI) systems provide explanations that are just clues or hints ab...
The rise of AI methods to make predictions and decisions has led to a pressing need for more explain...
Necessity and sufficiency are the building blocks of all successful explanations. Yet despite their ...
Explaining the predictions of opaque machine learning algorithms is an important and challenging tas...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...
Artificial Intelligence (AI) is often an integral part of modern decision support systems (DSSs). Th...
Many applications of data-driven models demand transparency of decisions, especially in health care,...
A high-velocity paradigm shift towards Explainable Artificial Intelligence (XAI) has emerged in rece...
Modern machine learning methods allow for complex and in-depth analytics, but the predictive models ...
The rising popularity of explainable artificial intelligence (XAI) to understand high-performing bla...
A key impediment to the use of AI is the lacking of transparency, especially in safety/security crit...
Explainable Artificial Intelligence (XAI) has experienced a significant growth over the last few yea...
The rise of AI methods to make predictions and decisions has led to a pressing need for more explain...
Necessity and sufficiency are the building blocks of all successful explanations. Yet despite their ...
Since the introduction of the term explainable artificial intelligence (XAI), many contrasting defin...
Introduction: Many Explainable AI (XAI) systems provide explanations that are just clues or hints ab...
The rise of AI methods to make predictions and decisions has led to a pressing need for more explain...
Necessity and sufficiency are the building blocks of all successful explanations. Yet despite their ...
Explaining the predictions of opaque machine learning algorithms is an important and challenging tas...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...