Despite the impressive performance of Deep Neural Networks (DNNs), they usually lack the explanatory power of disciplines such as logic programming. Even though they can learn to solve very difficult problems, the learning is usually implicit and it is very difficult, if not impossible, to interpret the underlying explanations that is implicitly stored in the weights of the neural network models. On the other hand, standard logic programming is usually limited in scope and application compared to the DNNs. The objective of this dissertation is to bridge the gap between these two disciplines by presenting a novel paradigm for learning algorithmic and discrete tasks via neural networks. This novel approach, uses the differentiable neural net...
Deep learning is very effective at jointly learning feature representations and classification model...
topic: The research field of neurosymbolic integration aims at combining the advantages of neural ne...
We introduce deep neural networks for end-to-end differentiable theorem proving that operate on dens...
The integration of reasoning, learning, and decision-making is key to build more general artificial ...
Deep reinforcement learning (DRL) has achieved significant breakthroughs in various tasks. However, ...
Recent work on neuro-symbolic inductive logic programming has led to promising approaches that can l...
Classic algorithms and machine learning systems like neural networks are both abundant in everyday l...
In the past years, deep learning models have been successfully applied in several cognitive tasks. O...
Discovering efficient algorithms is central to computer science. In this thesis, we aim to discover ...
Recent advancements in field of Artificial Intelligence, especially in the field of Deep Learning (D...
We integrate Markov Logic networks with deep learning architectures operating on high-dimensional an...
Deep reinforcement learning (DRL) is poised to revolutionize the field of artificial intelligence (A...
Machine learning is concerned with computer systems that learn from data instead of being explicitly...
Boolean Constraint Satisfaction Problems naturally arise in a variety of fields in Formal Methods an...
Inductive Logic Programming (ILP) is a subfield of Machine Learning with foundations in logic progra...
Deep learning is very effective at jointly learning feature representations and classification model...
topic: The research field of neurosymbolic integration aims at combining the advantages of neural ne...
We introduce deep neural networks for end-to-end differentiable theorem proving that operate on dens...
The integration of reasoning, learning, and decision-making is key to build more general artificial ...
Deep reinforcement learning (DRL) has achieved significant breakthroughs in various tasks. However, ...
Recent work on neuro-symbolic inductive logic programming has led to promising approaches that can l...
Classic algorithms and machine learning systems like neural networks are both abundant in everyday l...
In the past years, deep learning models have been successfully applied in several cognitive tasks. O...
Discovering efficient algorithms is central to computer science. In this thesis, we aim to discover ...
Recent advancements in field of Artificial Intelligence, especially in the field of Deep Learning (D...
We integrate Markov Logic networks with deep learning architectures operating on high-dimensional an...
Deep reinforcement learning (DRL) is poised to revolutionize the field of artificial intelligence (A...
Machine learning is concerned with computer systems that learn from data instead of being explicitly...
Boolean Constraint Satisfaction Problems naturally arise in a variety of fields in Formal Methods an...
Inductive Logic Programming (ILP) is a subfield of Machine Learning with foundations in logic progra...
Deep learning is very effective at jointly learning feature representations and classification model...
topic: The research field of neurosymbolic integration aims at combining the advantages of neural ne...
We introduce deep neural networks for end-to-end differentiable theorem proving that operate on dens...