URL to accepted papers on conference siteThis paper presents an approximate method for performing Bayesian inference in models with conditional independence over a decentralized network of learning agents. The method first employs variational inference on each individual learning agent to generate a local approximate posterior, the agents transmit their local posteriors to other agents in the network, and finally each agent combines its set of received local posteriors. The key insight in this work is that, for many Bayesian models, approximate inference schemes destroy symmetry and dependencies in the model that are crucial to the correct application of Bayes’ rule when combining the local posteriors. The proposed method addresses this iss...
We present a new parallel algorithm for learning Bayesian inference networks from data. Our learning...
The field of machine learning has grown tremendously in the past decade. It is utilized in many diff...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
This work presents a decentralized, approx-imate method for performing variational in-ference on a n...
Motivated by the need to analyze large, decentralized datasets, distributed Bayesian inference has b...
Bayesian models provide a framework for probabilistic modelling of complex datasets. Many such model...
We propose a general method for distributed Bayesian model choice, using the marginal likelihood, wh...
Federated Learning enables multiple data centers to train a central model collaboratively without ex...
AbstractThis paper addresses the issue of designing an effective distributed learning system in whic...
This paper makes two contributions to Bayesian machine learning algorithms. Firstly, we propose stoc...
This paper presents a methodology for creating streaming, distributed inference algorithms for Bayes...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Abstract This article deals with the problem of distributed machine learning, in which agents updat...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
Distributed Bayesian inference provides a full quantification of uncertainty offering numerous advan...
We present a new parallel algorithm for learning Bayesian inference networks from data. Our learning...
The field of machine learning has grown tremendously in the past decade. It is utilized in many diff...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
This work presents a decentralized, approx-imate method for performing variational in-ference on a n...
Motivated by the need to analyze large, decentralized datasets, distributed Bayesian inference has b...
Bayesian models provide a framework for probabilistic modelling of complex datasets. Many such model...
We propose a general method for distributed Bayesian model choice, using the marginal likelihood, wh...
Federated Learning enables multiple data centers to train a central model collaboratively without ex...
AbstractThis paper addresses the issue of designing an effective distributed learning system in whic...
This paper makes two contributions to Bayesian machine learning algorithms. Firstly, we propose stoc...
This paper presents a methodology for creating streaming, distributed inference algorithms for Bayes...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Abstract This article deals with the problem of distributed machine learning, in which agents updat...
Solving complex but structured problems in a decentralized manner via multiagent collaboration has r...
Distributed Bayesian inference provides a full quantification of uncertainty offering numerous advan...
We present a new parallel algorithm for learning Bayesian inference networks from data. Our learning...
The field of machine learning has grown tremendously in the past decade. It is utilized in many diff...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...