Special Track on Neuro-symbolic xAI at the 1st World Conference on eXplainable Artificial Intelligence
Lisbon, Portugal, 26/07/2023–28/07/2023
Integrating symbolic and sub-symbolic approaches to make intelligent systems understandable and explainable is at the core of new fields such as neuro-symbolic computing. Neural-symbolic computing aims to integrate two fundamental cognitive abilities: learning from the environment and reasoning from what has been learned. Neural-symbolic computing reconciles the advantages of robust learning in neural networks and reasoning and interpretability of symbolic representation, enabling explainability via symbolic representations for network models.
temi di interesse
- Probabilistic methods for explainability with Neural Networks
- Enabling explanations with Computing Logic Programs with Neural Networks
- Learning Logic Programs for explainable AI systems
- Enabling explanations with Neurosymbolic Logic Programming
- Enabling explanations with Nonmonotonic Reasoning and Learning
- Machine Learning for Theorem Proving
- Abductive Logic Programming and Learning for XAI
- Learning Answer Set Programs for XAI
- Interpretability and Explainability via symbolic knowledge extraction and injection from/to opaque models
- Enabling explanations with Inductive logic programming
- Explainable planning
evento ospitante
funge da
evento ospitato per