Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2011.Cataloged from PDF version of thesis.Includes bibliographical references (p. 135-144).We investigate the class of computable probability distributions and explore the fundamental limitations of using this class to describe and compute conditional distributions. In addition to proving the existence of noncomputable conditional distributions, and thus ruling out the possibility of generic probabilistic inference algorithms (even inefficient ones), we highlight some positive results showing that posterior inference is possible in the presence of additional structure like exchangeability and noise, both of which are common in Bayes...
Probabilistic programming uses programs to express generative models whose posterior probability is ...
International audienceWe show that probabilistic computable functions, i.e., those functions outputt...
We present an exact Bayesian inference method for discrete statistical models, which can find exact ...
Abstract. As inductive inference and machine learning methods in computer science see continued succ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2009....
AbstractThe Bayesian program in statistics starts from the assumption that an individual can always ...
AbstractThe Bayesian program in statistics starts from the assumption that an individual can always ...
This thesis describes work on two applications of probabilistic programming: the learning of probab...
Probabilistic inference is an attractive approach to uncertain reasoning and em-pirical learning in ...
A leading idea is to apply techniques from verification and programming theory to machine learning a...
Probabilistic programming refers to the idea of using standard programming constructs for specifying...
The machine learning community has recently shown a lot of interest in practical probabilistic progr...
Although probabilistic modeling and Bayesian inference provide a unifying theoretical framework for ...
Although probabilistic modeling and Bayesian inference provide a unifying theoretical framework for ...
Probabilistic models used in quantitative sciences have historically co-evolved with methods for per...
Probabilistic programming uses programs to express generative models whose posterior probability is ...
International audienceWe show that probabilistic computable functions, i.e., those functions outputt...
We present an exact Bayesian inference method for discrete statistical models, which can find exact ...
Abstract. As inductive inference and machine learning methods in computer science see continued succ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2009....
AbstractThe Bayesian program in statistics starts from the assumption that an individual can always ...
AbstractThe Bayesian program in statistics starts from the assumption that an individual can always ...
This thesis describes work on two applications of probabilistic programming: the learning of probab...
Probabilistic inference is an attractive approach to uncertain reasoning and em-pirical learning in ...
A leading idea is to apply techniques from verification and programming theory to machine learning a...
Probabilistic programming refers to the idea of using standard programming constructs for specifying...
The machine learning community has recently shown a lot of interest in practical probabilistic progr...
Although probabilistic modeling and Bayesian inference provide a unifying theoretical framework for ...
Although probabilistic modeling and Bayesian inference provide a unifying theoretical framework for ...
Probabilistic models used in quantitative sciences have historically co-evolved with methods for per...
Probabilistic programming uses programs to express generative models whose posterior probability is ...
International audienceWe show that probabilistic computable functions, i.e., those functions outputt...
We present an exact Bayesian inference method for discrete statistical models, which can find exact ...