We consider the problem of estimating the arithmetic average of a finite collection of real vectors stored in a distributed fashion across several compute nodes subject to a communication budget constraint. Our analysis does not rely on any statistical assumptions about the source of the vectors. This problem arises as a subproblem in many applications, including reduce-all operations within algorithms for distributed and federated optimization and learning. We propose a flexible family of randomized algorithms exploring the trade-off between expected communication cost and estimation error. Our family contains the full-communication and zero-error method on one extreme, and an ϵ-bit communication and O(1/(∈n)) error method on the opposite ...
Cataloged from PDF version of article.We introduce novel diffusion based adaptive estimation strate...
We analyze how distributed or decentralized estimation can be performed over networks, when there is...
article number 62International audienceThe statistical analysis of massive and complex data sets wil...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
We consider the problem ofdistributed mean estimation (DME), in which n machines are each given a lo...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
We consider the problem of estimating the mean of a symmetric log-concave distribution under the con...
Information-theoretic lower bounds on the estimation error are derived for problems of distributed c...
We explore the connection between dimensionality and communication cost in distributed learning prob...
In this thesis, we study distributed statistical learning, in which multiple terminals, connected by...
We study the problem of distributed mean estimation and optimization under communication constraints...
We introduce novel diffusion based adaptive estimation strategies for distributed networks that have...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
Cataloged from PDF version of article.We introduce novel diffusion based adaptive estimation strate...
We analyze how distributed or decentralized estimation can be performed over networks, when there is...
article number 62International audienceThe statistical analysis of massive and complex data sets wil...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
We consider the problem ofdistributed mean estimation (DME), in which n machines are each given a lo...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
We consider the problem of estimating the mean of a symmetric log-concave distribution under the con...
Information-theoretic lower bounds on the estimation error are derived for problems of distributed c...
We explore the connection between dimensionality and communication cost in distributed learning prob...
In this thesis, we study distributed statistical learning, in which multiple terminals, connected by...
We study the problem of distributed mean estimation and optimization under communication constraints...
We introduce novel diffusion based adaptive estimation strategies for distributed networks that have...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
Cataloged from PDF version of article.We introduce novel diffusion based adaptive estimation strate...
We analyze how distributed or decentralized estimation can be performed over networks, when there is...
article number 62International audienceThe statistical analysis of massive and complex data sets wil...