High dimensional probabilistic models are used for many modern scientific and engineering data analysis tasks. Interpreting neural spike trains, compressing video, identifying features in DNA microarrays, and recognizing particles in high energy physics all rely upon the ability to find and model complex structure in a high dimensional space. Despite their great promise, high dimensional probabilistic models are frequently computationally intractable to work with in practice. In this thesis I develop solutions to overcome this intractability, primarily in the context of energy based models.A common cause of intractability is that model distributions cannot be analytically normalized. Probabilities can only be computed up to a constant, m...
Learning is the ability to generalise beyond training examples; but because many generalisations are...
Probabilistic topic models are popular unsupervised learning methods, including probabilistic latent...
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
Fitting probabilistic models to data is often difficult, due to the general intractability of the pa...
One of the most notable distinctions between humans and most other animals is our ability to grow co...
In this dissertation, we seek a simple and unified probabilistic model, with power endowed with mode...
Machine learning studies algorithms for learning from data. Probabilistic modeling and reasoning...
In recent years, probabilistic models have become fundamental techniques in machine learning. They a...
Recent advances in statistical inference have significantly expanded the toolbox of probabilistic mo...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Probabilistic generative models, especially ones that are parametrized by convolutional neural netwo...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
Neural network models able to approximate and sample high-dimensional probability distributions are ...
Learning is the ability to generalise beyond training examples; but because many generalisations are...
Probabilistic topic models are popular unsupervised learning methods, including probabilistic latent...
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
Fitting probabilistic models to data is often difficult, due to the general intractability of the pa...
One of the most notable distinctions between humans and most other animals is our ability to grow co...
In this dissertation, we seek a simple and unified probabilistic model, with power endowed with mode...
Machine learning studies algorithms for learning from data. Probabilistic modeling and reasoning...
In recent years, probabilistic models have become fundamental techniques in machine learning. They a...
Recent advances in statistical inference have significantly expanded the toolbox of probabilistic mo...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Probabilistic generative models, especially ones that are parametrized by convolutional neural netwo...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
Neural network models able to approximate and sample high-dimensional probability distributions are ...
Learning is the ability to generalise beyond training examples; but because many generalisations are...
Probabilistic topic models are popular unsupervised learning methods, including probabilistic latent...
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...