We propose to formulate the problem of representing a distribution of robot configurations (e.g. joint angles) as that of approximating a product of experts. Our approach uses variational inference, a popular method in Bayesian computation, which has several practical advantages over sampling-based techniques. To be able to represent complex and multimodal distributions of configurations, mixture models are used as approximate distribution. We show that the problem of approximating a distribution of robot configurations while satisfying multiple objectives arises in a wide range of problems in robotics, for which the properties of the proposed approach have relevant consequences. Several applications are discussed, including learning object...
<div><p>Mixtures of linear mixed models (MLMMs) are useful for clustering grouped data and can be es...
Many methods for machine learning rely on approximate inference from intractable probability distrib...
The research presented in this thesis is on the topic of the Bayesian approach to statistical infere...
A common approach to learn robotic skills is to imitate a demonstrated policy. Due to the compoundin...
A common approach to learn robotic skills is to imitate a demonstrated policy. Due to the compoundin...
Variational methods, which have become popular in the neural computing/machine learning literature, ...
We present an algorithm that infers the model structure of a mixture of factor analysers using an ef...
Probability distributions are key components of many learning from demonstration (LfD) approaches, w...
Variational methods for model comparison have become popular in the neural computing/machine learni...
Motor primitives or motion templates have become an important concept for both modeling human motor ...
Abstract—This paper presents an approach to distributively approximate the continuous probability di...
© 2013 Massachusetts Institute of Technology. This paper presents algorithms to distributively appro...
International audienceMore and more fields of applied computer science involve fusion of multiple da...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
International audienceMultiple scale distributions are multivariate distributions that exhibit a var...
<div><p>Mixtures of linear mixed models (MLMMs) are useful for clustering grouped data and can be es...
Many methods for machine learning rely on approximate inference from intractable probability distrib...
The research presented in this thesis is on the topic of the Bayesian approach to statistical infere...
A common approach to learn robotic skills is to imitate a demonstrated policy. Due to the compoundin...
A common approach to learn robotic skills is to imitate a demonstrated policy. Due to the compoundin...
Variational methods, which have become popular in the neural computing/machine learning literature, ...
We present an algorithm that infers the model structure of a mixture of factor analysers using an ef...
Probability distributions are key components of many learning from demonstration (LfD) approaches, w...
Variational methods for model comparison have become popular in the neural computing/machine learni...
Motor primitives or motion templates have become an important concept for both modeling human motor ...
Abstract—This paper presents an approach to distributively approximate the continuous probability di...
© 2013 Massachusetts Institute of Technology. This paper presents algorithms to distributively appro...
International audienceMore and more fields of applied computer science involve fusion of multiple da...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
International audienceMultiple scale distributions are multivariate distributions that exhibit a var...
<div><p>Mixtures of linear mixed models (MLMMs) are useful for clustering grouped data and can be es...
Many methods for machine learning rely on approximate inference from intractable probability distrib...
The research presented in this thesis is on the topic of the Bayesian approach to statistical infere...