Many methods for machine learning rely on approximate inference from intractable probability distributions. Variational inference approximates such distributions by tractable models that can be subsequently used for approximate inference. Learning sufficiently accurate approximations requires a rich model family and careful exploration of the relevant modes of the target distribution. We propose a method for learning accurate GMM approximations of intractable probability distributions based on insights from policy search by using information-geometric trust regions for principled exploration. For efficient improvement of the GMM approximation, we derive a lower bound on the corresponding optimization objective enabling us to update the comp...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Abstract Stochastic variational inference makes it possible to approximate posterior distributions i...
Many methods for machine learning rely on approximate inference from intractable probability distrib...
Inference from complex distributions is a common problem in machine learning needed for many Bayesia...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
Variational methods for model comparison have become popular in the neural computing/machine learni...
Variational inference provides a general optimization framework to approximate the posterior distrib...
Variational inference is a technique for approximating intractable posterior distributions in order ...
Variational methods, which have become popular in the neural computing/machine learning literature, ...
Boosting variational inference (BVI) approximates Bayesian posterior distributions by iteratively bu...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
Variational Message Passing facilitates automated variational inference in factorized probabilistic ...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Abstract Stochastic variational inference makes it possible to approximate posterior distributions i...
Many methods for machine learning rely on approximate inference from intractable probability distrib...
Inference from complex distributions is a common problem in machine learning needed for many Bayesia...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
Variational methods for model comparison have become popular in the neural computing/machine learni...
Variational inference provides a general optimization framework to approximate the posterior distrib...
Variational inference is a technique for approximating intractable posterior distributions in order ...
Variational methods, which have become popular in the neural computing/machine learning literature, ...
Boosting variational inference (BVI) approximates Bayesian posterior distributions by iteratively bu...
<p>One of the core problems of modern statistics is to approximate difficult-to-compute probability ...
Variational Message Passing facilitates automated variational inference in factorized probabilistic ...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Abstract Stochastic variational inference makes it possible to approximate posterior distributions i...