Neural network based generative models with discriminative components are a powerful approach for semi-supervised learning. However, these techniques a) cannot account for model uncertainty in the estimation of the model's discriminative component and b) lack flexibility to capture complex stochastic patterns in the label generation process. To avoid these problems, we first propose to use a discriminative component with stochastic inputs for increased noise flexibility. We show how an efficient Gibbs sampling procedure can marginalize the stochastic inputs when inferring missing labels in this model. Following this, we extend the discriminative component to be fully Bayesian and produce estimates of uncertainty in its parameter values. Thi...
This research focuses on semi-supervised classification tasks, specifically for graph-structured dat...
Discriminative learning of Bayesian network classifiers has recently received considerable attention...
Although discriminative learning in graphical models generally improves classification results, the ...
Generative models can be used for a wide range of tasks, and have the appealing ability to learn fro...
The ever-increasing size of modern data sets combined with the difficulty of obtaining label informa...
Through an adversarial game, generative adversarial networks (GANs) can implicitly learn rich distri...
Graph Neural Networks (GNNs) have achieved remarkable performance in the task of the semi-supervised...
Predicting bioactivity and physical properties of small molecules is a central challenge in drug dis...
Recent advances have demonstrated substantial benefits from learning with both generative and discri...
Bayesian neural networks with latent variables are scalable and flexible probabilistic models: They ...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Semi-supervised learning (SSL), is classification where additional unlabeled data can be used to imp...
We introduce a novel training principle for generative probabilistic models that is an al-ternative ...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
We marry ideas from deep neural networks and approximate Bayesian inference to derive a gen-eralised...
This research focuses on semi-supervised classification tasks, specifically for graph-structured dat...
Discriminative learning of Bayesian network classifiers has recently received considerable attention...
Although discriminative learning in graphical models generally improves classification results, the ...
Generative models can be used for a wide range of tasks, and have the appealing ability to learn fro...
The ever-increasing size of modern data sets combined with the difficulty of obtaining label informa...
Through an adversarial game, generative adversarial networks (GANs) can implicitly learn rich distri...
Graph Neural Networks (GNNs) have achieved remarkable performance in the task of the semi-supervised...
Predicting bioactivity and physical properties of small molecules is a central challenge in drug dis...
Recent advances have demonstrated substantial benefits from learning with both generative and discri...
Bayesian neural networks with latent variables are scalable and flexible probabilistic models: They ...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Semi-supervised learning (SSL), is classification where additional unlabeled data can be used to imp...
We introduce a novel training principle for generative probabilistic models that is an al-ternative ...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
We marry ideas from deep neural networks and approximate Bayesian inference to derive a gen-eralised...
This research focuses on semi-supervised classification tasks, specifically for graph-structured dat...
Discriminative learning of Bayesian network classifiers has recently received considerable attention...
Although discriminative learning in graphical models generally improves classification results, the ...