We propose an efficient nonparametric strategy for learning a message operator in expectation propagation (EP), which takes as input the set of incoming messages to a factor node, and produces an outgoing message as output. This learned operator replaces the multivariate integral required in classical EP, which may not have an analytic expression. We use kernel-based regression, which is trained on a set of probability distributions representing the incoming messages, and the associated outgoing messages. The kernel approach has two main advantages: first, it is fast, as it is implemented using a novel two-layer random feature representation of the input message distributions; second, it has principled uncertainty estimates, and can be chea...
We discuss the integration of the expectation-maximization (EM) algorithm for maximum likelihood lea...
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
© 2016, Institute of Mathematical Statistics. All rights reserved. We derive the explicit form of ex...
We propose an efficient nonparametric strategy for learning a message operator in expectation propag...
We propose an efficient nonparametric strategy for learning a message operator in expectation propag...
We propose an efficient nonparametric strategy for learning a message operator in expectation propag...
We propose to learn a kernel-based message operator which takes as input all expectation propagation...
Expectation Propagation (EP) is a popular approximate posterior inference al-gorithm that often prov...
We propose a nonparametric generalization of belief propagation, Kernel Belief Propagation (KBP), fo...
We discuss the expectation propagation (EP) algorithm for approximate Bayesian inference using a fac...
© 2018 Australian Statistical Publishing Association Inc. Published by John Wiley & Sons Australia P...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
We study a message passing approach to power expectation propagation for Bayesian model fitting and ...
University of Technology Sydney. Faculty of Science.Message passing algorithms are a group of fast, ...
We design iterative receiver schemes for a generic communication system by treating channel estimati...
We discuss the integration of the expectation-maximization (EM) algorithm for maximum likelihood lea...
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
© 2016, Institute of Mathematical Statistics. All rights reserved. We derive the explicit form of ex...
We propose an efficient nonparametric strategy for learning a message operator in expectation propag...
We propose an efficient nonparametric strategy for learning a message operator in expectation propag...
We propose an efficient nonparametric strategy for learning a message operator in expectation propag...
We propose to learn a kernel-based message operator which takes as input all expectation propagation...
Expectation Propagation (EP) is a popular approximate posterior inference al-gorithm that often prov...
We propose a nonparametric generalization of belief propagation, Kernel Belief Propagation (KBP), fo...
We discuss the expectation propagation (EP) algorithm for approximate Bayesian inference using a fac...
© 2018 Australian Statistical Publishing Association Inc. Published by John Wiley & Sons Australia P...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
We study a message passing approach to power expectation propagation for Bayesian model fitting and ...
University of Technology Sydney. Faculty of Science.Message passing algorithms are a group of fast, ...
We design iterative receiver schemes for a generic communication system by treating channel estimati...
We discuss the integration of the expectation-maximization (EM) algorithm for maximum likelihood lea...
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
© 2016, Institute of Mathematical Statistics. All rights reserved. We derive the explicit form of ex...