Bayesian methods offer the flexibility to both model uncertainty and incorporate domain knowledge into the modeling process. Deep generative modeling and Bayesian deep learning methods, such as the variational autoencoder (VAE), have expanded the scope of Bayesian methods, enabling them to scale to large, high-dimensional datasets. Incorporating prior knowledge or domain expertise into deep generative modeling is still a challenge, often resulting in models where Bayesian inference is prohibitively slow or even intractable. In this thesis, I first motivate using structured priors, presenting a contribution in the space of interactive structure learning. I then define Bayesian structured representation learning (BSRL) models, which combine s...
We introduce a conceptually novel structured prediction model, GP-struct, which is kernelized, non-p...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
This paper explores the why and what of statistical learning from a computational modelling perspect...
Bayesian methods offer the flexibility to both model uncertainty and incorporate domain knowledge in...
Successful machine learning methods require a trade-off between memorization and generalization. Too...
Stochastic processes provide a mathematically elegant way to model complex data. In theory, they pro...
We propose a method for learning the dependency structure between latent variables in deep latent va...
Sparse modeling for signal processing and machine learning has been at the focus of scientific resea...
Bayesian statistics has emerged as a leading paradigm for the analysis of complicated datasets and f...
Probabilistic graphical models, e.g. Bayesian Networks, have been traditionally introduced to model ...
What data should we gather to learn about the underlying structure of the world as quickly as possib...
Effectively leveraging model structure in reinforcement learning is a difficult task, but failure to...
We introduce a conceptually novel structured prediction model, GPstruct, which is kernelized, non-pa...
46 Bayesian learning of latent variable models 2.1 Bayesian modeling and variational learning Unsupe...
Bayesian structure learning allows inferring Bayesian network structure from data while reasoning ab...
We introduce a conceptually novel structured prediction model, GP-struct, which is kernelized, non-p...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
This paper explores the why and what of statistical learning from a computational modelling perspect...
Bayesian methods offer the flexibility to both model uncertainty and incorporate domain knowledge in...
Successful machine learning methods require a trade-off between memorization and generalization. Too...
Stochastic processes provide a mathematically elegant way to model complex data. In theory, they pro...
We propose a method for learning the dependency structure between latent variables in deep latent va...
Sparse modeling for signal processing and machine learning has been at the focus of scientific resea...
Bayesian statistics has emerged as a leading paradigm for the analysis of complicated datasets and f...
Probabilistic graphical models, e.g. Bayesian Networks, have been traditionally introduced to model ...
What data should we gather to learn about the underlying structure of the world as quickly as possib...
Effectively leveraging model structure in reinforcement learning is a difficult task, but failure to...
We introduce a conceptually novel structured prediction model, GPstruct, which is kernelized, non-pa...
46 Bayesian learning of latent variable models 2.1 Bayesian modeling and variational learning Unsupe...
Bayesian structure learning allows inferring Bayesian network structure from data while reasoning ab...
We introduce a conceptually novel structured prediction model, GP-struct, which is kernelized, non-p...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
This paper explores the why and what of statistical learning from a computational modelling perspect...