We propose a method to combine the interpretability and expressive power of firstorder logic with the effectiveness of neural network learning. In particular, we introduce a lifted framework in which first-order rules are used to describe the structure of a given problem setting. These rules are then used as a template for constructing a number of neural networks, one for each training and testing example. As the different networks corresponding to different examples share their weights, these weights can be efficiently learned using stochastic gradient descent. Our framework provides a flexible way for implementing and combining a wide variety of modelling constructs. In particular, the use of first-order logic allows for a declarative spe...
Real-world entities (e.g., people and places) are often connected via relations, forming multi-relat...
Markov logic networks (MLNs) are a well-known statistical relational learning formalism that combine...
Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn ground l...
We propose a method to combine the interpretability and expressive power of firstorder logic with th...
Lifted Relational Neural Networks (LRNNs) describe relational domains using weighted first-order rul...
Lifted relational neural networks (LRNNs) are a flexible neural-symbolic framework based on the idea...
Statistical relational AI (StarAI) aims at reasoning and learning in noisy domains described in term...
We introduce a novel method for relational learning with neural networks. The contributions of this ...
Recent years have seen a surge of interest in Statistical Relational Learning (SRL) models that comb...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Markov logic networks (MLNs) are a popular statistical relational learning formalism that combine Ma...
In the last decade, connectionist models have been proposed that can process structured information ...
Markov logic networks (MLNs) are a popular statistical relational learning formalism that com-bine M...
In the last decade, connectionist models have been proposed that can process structured information ...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Real-world entities (e.g., people and places) are often connected via relations, forming multi-relat...
Markov logic networks (MLNs) are a well-known statistical relational learning formalism that combine...
Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn ground l...
We propose a method to combine the interpretability and expressive power of firstorder logic with th...
Lifted Relational Neural Networks (LRNNs) describe relational domains using weighted first-order rul...
Lifted relational neural networks (LRNNs) are a flexible neural-symbolic framework based on the idea...
Statistical relational AI (StarAI) aims at reasoning and learning in noisy domains described in term...
We introduce a novel method for relational learning with neural networks. The contributions of this ...
Recent years have seen a surge of interest in Statistical Relational Learning (SRL) models that comb...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Markov logic networks (MLNs) are a popular statistical relational learning formalism that combine Ma...
In the last decade, connectionist models have been proposed that can process structured information ...
Markov logic networks (MLNs) are a popular statistical relational learning formalism that com-bine M...
In the last decade, connectionist models have been proposed that can process structured information ...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Real-world entities (e.g., people and places) are often connected via relations, forming multi-relat...
Markov logic networks (MLNs) are a well-known statistical relational learning formalism that combine...
Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn ground l...