Explanation is an important function in symbolic artificial intelligence (AI). For instance, explanation is used in machine learning, in case-based reasoning and, most important, the explanation of the results of a reasoning process to a user must be a component of any inference system. Experience with expert systems has shown that the ability to generate explanations is absolutely crucial for the user acceptance of Al systems. In contrast to symbolic systems, neural networks have no explicit, declarative knowledge representation and therefore have considerable difficulties in generating explanation structures. In neural networks, knowledge is encoded in numeric parameters (weight) and distributed all over the system. It is the intention of...
We discuss the impact of presenting explanations to people for Artificial Intelligence (AI) decision...
eXplainable AI focuses on generating explanations for the output of an AI algorithm to a user, usual...
International audienceThe use of neural networks is still difficult in many application areas due to...
We investigate the potential of Neural-Symbolic integration to reason about what a neural network ha...
Research on Deep Learning has achieved remarkable results in recent years, mainly thanks to the com...
The large and still increasing popularity of deep learning clashes with a major limit of neural netw...
In this paper, we review recent approaches for explaining concepts in neural networks. Concepts can ...
Despite the rapid growth in attention on eXplainable AI (XAI) of late, explanations in the literatur...
Connectionist models of cognition are all the rage these days. They are said to provide better expla...
Accepted at IJCAI19 Neural-Symbolic Learning and Reasoning Workshop (https://sites.google.com/view/n...
Explanation based learning has typically been considered a symbolic learning method. An explanation ...
A knowledge based system may be considered as knowledge, distributed between one or several experts ...
The opaqueness of deep neural networks hinders their employment in safety-critical applications. Thi...
Many researchers have noted the importance of combining inductive and analytical learning, yet we st...
Issues regarding explainable AI involve four components: users, laws and regulations, explanations a...
We discuss the impact of presenting explanations to people for Artificial Intelligence (AI) decision...
eXplainable AI focuses on generating explanations for the output of an AI algorithm to a user, usual...
International audienceThe use of neural networks is still difficult in many application areas due to...
We investigate the potential of Neural-Symbolic integration to reason about what a neural network ha...
Research on Deep Learning has achieved remarkable results in recent years, mainly thanks to the com...
The large and still increasing popularity of deep learning clashes with a major limit of neural netw...
In this paper, we review recent approaches for explaining concepts in neural networks. Concepts can ...
Despite the rapid growth in attention on eXplainable AI (XAI) of late, explanations in the literatur...
Connectionist models of cognition are all the rage these days. They are said to provide better expla...
Accepted at IJCAI19 Neural-Symbolic Learning and Reasoning Workshop (https://sites.google.com/view/n...
Explanation based learning has typically been considered a symbolic learning method. An explanation ...
A knowledge based system may be considered as knowledge, distributed between one or several experts ...
The opaqueness of deep neural networks hinders their employment in safety-critical applications. Thi...
Many researchers have noted the importance of combining inductive and analytical learning, yet we st...
Issues regarding explainable AI involve four components: users, laws and regulations, explanations a...
We discuss the impact of presenting explanations to people for Artificial Intelligence (AI) decision...
eXplainable AI focuses on generating explanations for the output of an AI algorithm to a user, usual...
International audienceThe use of neural networks is still difficult in many application areas due to...