We describe a variational approximation method for e cient inference in large-scale probabilistic models. Variational methods are deterministic procedures that provide approximations to marginal and conditional probabilities of interest. They provide alternatives to approximate inference methods based on stochastic sampling or search. We describe avariational approach to the problem of diagnostic inference in the \Quick Medical Reference" (QMR) network. The QMR network is a large-scale probabilistic graphical model built on statistical and expert knowledge. Exact probabilistic inference is infeasible in this model for all but a small set of cases. We evaluate our variational inference algorithm on a large set of diagnostic test cas...
Variational inference has become a widely used method to approximate posteriors in complex latent va...
We present a class of approximate inference algorithms for graphical models of the QMR-DT type. We ...
The probabilistic approach is crucial in modern machine learning, as it provides transparency and qu...
We describe a variational approximation method for efficient inference in large-scale probabilistic ...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
Abstract: We have developed a probabilistic reformulation of the Quick Medical Reference (QMR) syste...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
AbstractA basic challenge for probabilistic models of cognition is explaining how probabilistically ...
Recent advances in statistical inference have significantly expanded the toolbox of probabilistic mo...
Computer-based diagnostic decision support systems (DSS) will play an increasingly important role in...
Thesis (Ph. D. in Computational Neuroscience)--Massachusetts Institute of Technology, Dept. of Brain...
1. Variational inference and learning We derive the variational inference updates in this sec-tion. ...
Many recent advances in large scale probabilistic inference rely on variational methods. The success...
Variational inference has become a widely used method to approximate posteriors in complex latent va...
We present a class of approximate inference algorithms for graphical models of the QMR-DT type. We ...
The probabilistic approach is crucial in modern machine learning, as it provides transparency and qu...
We describe a variational approximation method for efficient inference in large-scale probabilistic ...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
The central objective of this thesis is to develop new algorithms for inference in probabilistic gra...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
Abstract: We have developed a probabilistic reformulation of the Quick Medical Reference (QMR) syste...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
AbstractA basic challenge for probabilistic models of cognition is explaining how probabilistically ...
Recent advances in statistical inference have significantly expanded the toolbox of probabilistic mo...
Computer-based diagnostic decision support systems (DSS) will play an increasingly important role in...
Thesis (Ph. D. in Computational Neuroscience)--Massachusetts Institute of Technology, Dept. of Brain...
1. Variational inference and learning We derive the variational inference updates in this sec-tion. ...
Many recent advances in large scale probabilistic inference rely on variational methods. The success...
Variational inference has become a widely used method to approximate posteriors in complex latent va...
We present a class of approximate inference algorithms for graphical models of the QMR-DT type. We ...
The probabilistic approach is crucial in modern machine learning, as it provides transparency and qu...