Deep neural networks are usually considered black-boxes due to their complex internal architecture, that cannot straightforwardly provide human-understandable explanations on how they behave. Indeed, Deep Learning is still viewed with skepticism in those real-world domains in which incorrect predictions may produce critical effects. This is one of the reasons why in the last few years Explainable Artificial Intelligence (XAI) techniques have gained a lot of attention in the scientific community. In this paper, we focus on the case of multi-label classification, proposing a neural network that learns the relationships among the predictors associated to each class, yielding First-Order Logic (FOL)-based descriptions. Both the explanation-rela...
In recent decades, artificial intelligence (AI) systems are becoming increasingly ubiquitous from lo...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
We propose an approach to faithfully explaining text classification models, using a specifically des...
Deep neural networks are usually considered black-boxes due to their complex internal architecture, ...
The large and still increasing popularity of deep learning clashes with a major limit of neural netw...
The opaqueness of deep neural networks hinders their employment in safety-critical applications. Thi...
We investigate the potential of Neural-Symbolic integration to reason about what a neural network ha...
Deep neural networks (DNNs) are an indispensable machine learning tool despite the difficulty of dia...
Research on Deep Learning has achieved remarkable results in recent years, mainly thanks to the com...
Deep neural networks (DNNs) are an indispensable machine learning tool despite the difficulty of dia...
As machine learning models gain traction in real world applications, user demand for transparent res...
Explaining the decisions of a Deep Learning Network is imperative to safeguard end-user trust. Such ...
Explanation is an important function in symbolic artificial intelligence (AI). For instance, explana...
Deep Neural Networks achieve state-of-the-art performances in several semantic NLP tasks but lack of...
Due to the black-box nature of deep learning models, methods for explaining the models’ results are ...
In recent decades, artificial intelligence (AI) systems are becoming increasingly ubiquitous from lo...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
We propose an approach to faithfully explaining text classification models, using a specifically des...
Deep neural networks are usually considered black-boxes due to their complex internal architecture, ...
The large and still increasing popularity of deep learning clashes with a major limit of neural netw...
The opaqueness of deep neural networks hinders their employment in safety-critical applications. Thi...
We investigate the potential of Neural-Symbolic integration to reason about what a neural network ha...
Deep neural networks (DNNs) are an indispensable machine learning tool despite the difficulty of dia...
Research on Deep Learning has achieved remarkable results in recent years, mainly thanks to the com...
Deep neural networks (DNNs) are an indispensable machine learning tool despite the difficulty of dia...
As machine learning models gain traction in real world applications, user demand for transparent res...
Explaining the decisions of a Deep Learning Network is imperative to safeguard end-user trust. Such ...
Explanation is an important function in symbolic artificial intelligence (AI). For instance, explana...
Deep Neural Networks achieve state-of-the-art performances in several semantic NLP tasks but lack of...
Due to the black-box nature of deep learning models, methods for explaining the models’ results are ...
In recent decades, artificial intelligence (AI) systems are becoming increasingly ubiquitous from lo...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
We propose an approach to faithfully explaining text classification models, using a specifically des...