Motivated by the need to analyze large, decentralized datasets, distributed Bayesian inference has become a critical research area across multiple fields, including statistics, electrical engineering, and economics. This paper establishes Frequentist properties, such as posterior consistency, asymptotic normality, and posterior contraction rates, for the distributed (non-)Bayes Inference problem among agents connected via a communication network. Our results show that, under appropriate assumptions on the communication graph, distributed Bayesian inference retains parametric efficiency while enhancing robustness in uncertainty quantification. We also explore the trade-off between statistical efficiency and communication efficiency by examin...
A distributed system is composed of independent agents, machines, processing units, etc., where inte...
open2noIn this paper, we consider a network of agents monitoring a spatially distributed arrival pro...
A current challenge for data management systems is to support the construction and maintenance of ma...
URL to accepted papers on conference siteThis paper presents an approximate method for performing Ba...
Distributed Bayesian inference provides a full quantification of uncertainty offering numerous advan...
Belief propagation (BP) is a technique for distributed inference in wireless networks and is often u...
We propose a general method for distributed Bayesian model choice, using the marginal likelihood, wh...
Defence is held on 24.11.2021 12:00 – 16:00 Zoom, https://aalto.zoom.us/j/6031768727Bayesian stat...
Abstract—This paper considers a problem of distributed hypothesis testing and social learning. Indiv...
We consider a distributed detection system under communication constraints, where several peripheral...
This paper makes two contributions to Bayesian machine learning algorithms. Firstly, we propose stoc...
Bayesian models of group learning are studied in Economics since the 1970s. and more recently in com...
Abstract This article deals with the problem of distributed machine learning, in which agents updat...
AbstractThis paper addresses the issue of designing an effective distributed learning system in whic...
We study distributed inference, learning and optimization in scenarios which involve networked entit...
A distributed system is composed of independent agents, machines, processing units, etc., where inte...
open2noIn this paper, we consider a network of agents monitoring a spatially distributed arrival pro...
A current challenge for data management systems is to support the construction and maintenance of ma...
URL to accepted papers on conference siteThis paper presents an approximate method for performing Ba...
Distributed Bayesian inference provides a full quantification of uncertainty offering numerous advan...
Belief propagation (BP) is a technique for distributed inference in wireless networks and is often u...
We propose a general method for distributed Bayesian model choice, using the marginal likelihood, wh...
Defence is held on 24.11.2021 12:00 – 16:00 Zoom, https://aalto.zoom.us/j/6031768727Bayesian stat...
Abstract—This paper considers a problem of distributed hypothesis testing and social learning. Indiv...
We consider a distributed detection system under communication constraints, where several peripheral...
This paper makes two contributions to Bayesian machine learning algorithms. Firstly, we propose stoc...
Bayesian models of group learning are studied in Economics since the 1970s. and more recently in com...
Abstract This article deals with the problem of distributed machine learning, in which agents updat...
AbstractThis paper addresses the issue of designing an effective distributed learning system in whic...
We study distributed inference, learning and optimization in scenarios which involve networked entit...
A distributed system is composed of independent agents, machines, processing units, etc., where inte...
open2noIn this paper, we consider a network of agents monitoring a spatially distributed arrival pro...
A current challenge for data management systems is to support the construction and maintenance of ma...