Learning abstract and systematic relations has been an open issue in neural network learning for over 30 years. It has been shown recently that neural networks do not learn relations based on identity and are unable to generalize well to unseen data. The Relation Based Pattern (RBP) approach has been proposed as a solution for this problem. In this work, we extend RBP by realizing it as a Bayesian prior on network weights to model the identity relations. This weight prior leads to a modified regularization term in otherwise standard network learning. In our experiments, we show that the Bayesian weight priors lead to perfect generalization when learning identity based relations and do not impede general neural network learning. We believe t...
Many complex processes can be viewed as dynamical systems of interacting agents. In many cases, only...
While modern deep neural architectures generalise well when test data is sampled from the same distr...
This research demonstrates a method of discriminating the numerical relationships of neural network ...
In this paper, we show that standard feed-forward and recurrent neural networks fail to learn abstra...
Deep neural networks have been widely used for various applications and have produced state-of-the-a...
Many researchers implicitly assume that neural networks learn relations and generalise them to new u...
The ability to learn abstractions and generalise is seen as the essence of human intelligence.7 Sinc...
Basic binary relations such as equality and inequality are fundamental to relational data structures...
In an influential paper (“Rule Learning by Seven-Month-Old Infants”), Marcus, Vijayan, Rao and Visht...
In an influential paper, Marcus et al. [1999] claimed that connectionist models cannot account for h...
In an influential paper (“Rule Learning by Seven-Month-Old Infants”), Marcus, Vijayan, Rao and Visht...
Relational data is ubiquitous in modern-day computing, and drives several key applications across mu...
Statistical relational AI (StarAI) aims at reasoning and learning in noisy domains described in term...
We propose a method to combine the interpretability and expressive power of firstorder logic with th...
In many real-world applications, the amount of data available for training is often limited, and thu...
Many complex processes can be viewed as dynamical systems of interacting agents. In many cases, only...
While modern deep neural architectures generalise well when test data is sampled from the same distr...
This research demonstrates a method of discriminating the numerical relationships of neural network ...
In this paper, we show that standard feed-forward and recurrent neural networks fail to learn abstra...
Deep neural networks have been widely used for various applications and have produced state-of-the-a...
Many researchers implicitly assume that neural networks learn relations and generalise them to new u...
The ability to learn abstractions and generalise is seen as the essence of human intelligence.7 Sinc...
Basic binary relations such as equality and inequality are fundamental to relational data structures...
In an influential paper (“Rule Learning by Seven-Month-Old Infants”), Marcus, Vijayan, Rao and Visht...
In an influential paper, Marcus et al. [1999] claimed that connectionist models cannot account for h...
In an influential paper (“Rule Learning by Seven-Month-Old Infants”), Marcus, Vijayan, Rao and Visht...
Relational data is ubiquitous in modern-day computing, and drives several key applications across mu...
Statistical relational AI (StarAI) aims at reasoning and learning in noisy domains described in term...
We propose a method to combine the interpretability and expressive power of firstorder logic with th...
In many real-world applications, the amount of data available for training is often limited, and thu...
Many complex processes can be viewed as dynamical systems of interacting agents. In many cases, only...
While modern deep neural architectures generalise well when test data is sampled from the same distr...
This research demonstrates a method of discriminating the numerical relationships of neural network ...