Intelligent systems that use Machine Learning classification algorithms are increasingly common in everyday society. However, many systems use black-box models that do not have characteristics that allow for self-explanation of their predictions. This situation leads researchers in the field and society to the following question: How can I trust the prediction of a model I cannot understand? In this sense, XAI emerges as a field of AI that aims to create techniques capable of explaining the decisions of the classifier to the end-user. As a result, several techniques have emerged, such as Explanation-by-Example, which has a few initiatives consolidated by the community currently working with XAI. This research explores the Item Response Theo...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...
Artificial Intelligence (AI) now depends on black box machine learning (ML) models which lack algori...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
Purpose: When Artificial Intelligence is penetrating every walk of our affairs and business, we face...
Algorithmic forecasts outperform human forecasts by 10% on average. State-of-the-art machine learnin...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
Modern machine learning methods allow for complex and in-depth analytics, but the predictive models ...
Machine Learning (ML) algorithms, as approach to Artificial Intelligence (AI), show unprecedented a...
To foster usefulness and accountability of machine learning (ML), it is essential to explain a model...
Increasing prevalence of opaque black-box AI has highlighted the need for explanations of their beha...
Many explainability methods have been proposed as a means of understanding how a learned machine lea...
This paper provides empirical concerns about post-hoc explanations of black-box ML models, one of th...
International audienceThis paper provides empirical concerns about post-hoc explanations of black-bo...
A significant drawback of eXplainable Artificial Intelligence (XAI) approaches is the assumption of ...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...
Artificial Intelligence (AI) now depends on black box machine learning (ML) models which lack algori...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
Purpose: When Artificial Intelligence is penetrating every walk of our affairs and business, we face...
Algorithmic forecasts outperform human forecasts by 10% on average. State-of-the-art machine learnin...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
Modern machine learning methods allow for complex and in-depth analytics, but the predictive models ...
Machine Learning (ML) algorithms, as approach to Artificial Intelligence (AI), show unprecedented a...
To foster usefulness and accountability of machine learning (ML), it is essential to explain a model...
Increasing prevalence of opaque black-box AI has highlighted the need for explanations of their beha...
Many explainability methods have been proposed as a means of understanding how a learned machine lea...
This paper provides empirical concerns about post-hoc explanations of black-box ML models, one of th...
International audienceThis paper provides empirical concerns about post-hoc explanations of black-bo...
A significant drawback of eXplainable Artificial Intelligence (XAI) approaches is the assumption of ...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...
Artificial Intelligence (AI) now depends on black box machine learning (ML) models which lack algori...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...