The problem of approximating a probability distribution occurs frequently in many areas of applied mathematics, including statistics, communication theory, machine learning, and the theoretical analysis of complex systems such as neural networks. Saul and Jordan (1996) have recently proposed a powerful method for efficiently approximating probability distributions known as structured variational approximations. In structured variational approximations, exact algorithms for probability computation on tractable substructures are combined with variational methods to handle the interactions between the substructures which make the system as a whole intractable. In this note, I present a mathematical result which can simplify the derivation of s...
The chief aim of this paper is to propose mean-field approximations for a broad class of Belief ne...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Exact inference in densely connected Bayesian networks is computation-ally intractable, and so there...
Exact inference in large, densely connected probabilistic networks is computa-tionally intractable, ...
This paper presents Variational Message Passing (VMP), a general purpose algorithm for applying vari...
Item does not contain fulltextStochastic variational inference offers an attractive option as a defa...
Variational approximations facilitate approximate inference for the parameters in complex statistica...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Bayesian belief networks can represent the complicated probabilistic processes that form natural sen...
Highly expressive directed latent variable mod-els, such as sigmoid belief networks, are diffi-cult ...
Highly expressive directed latent variable mod-els, such as sigmoid belief networks, are diffi-cult ...
We describe a variational approximation method for e cient inference in large-scale probabilistic mo...
This paper describes a general scheme for accomodating different types of conditional distributions ...
The chief aim of this paper is to propose mean-eld approximations for a broad class of Belief networ...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
The chief aim of this paper is to propose mean-field approximations for a broad class of Belief ne...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Exact inference in densely connected Bayesian networks is computation-ally intractable, and so there...
Exact inference in large, densely connected probabilistic networks is computa-tionally intractable, ...
This paper presents Variational Message Passing (VMP), a general purpose algorithm for applying vari...
Item does not contain fulltextStochastic variational inference offers an attractive option as a defa...
Variational approximations facilitate approximate inference for the parameters in complex statistica...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Bayesian belief networks can represent the complicated probabilistic processes that form natural sen...
Highly expressive directed latent variable mod-els, such as sigmoid belief networks, are diffi-cult ...
Highly expressive directed latent variable mod-els, such as sigmoid belief networks, are diffi-cult ...
We describe a variational approximation method for e cient inference in large-scale probabilistic mo...
This paper describes a general scheme for accomodating different types of conditional distributions ...
The chief aim of this paper is to propose mean-eld approximations for a broad class of Belief networ...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
The chief aim of this paper is to propose mean-field approximations for a broad class of Belief ne...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Exact inference in densely connected Bayesian networks is computation-ally intractable, and so there...