We consider the problem ofdistributed mean estimation (DME), in which n machines are each given a local d-dimensional vector xv∈Rd, and must cooperate to estimate the mean of their inputs μ=1n∑nv=1xv, while minimizing total communication cost. DME is a fundamental construct in distributed machine learning, and there has been considerable work on variants of this problem, especially in the context of distributed variance reduction for stochastic gradients in parallel SGD. Previous work typically assumes an upper bound on the norm of the input vectors, and achieves an error bound in terms of this norm. However, in many real applications, the input vectors are concentrated around the correct output μ, but μ itself has large norm. In such cases...
In this paper, a distributed stochastic approximation algorithm is studied. Applications of such alg...
In this paper, we use tools from rate-distortion theory to establish new upper bounds on the general...
DoctorIn this dissertation, we study on improving the performance of diffusion least mean square (LMS...
We explore the connection between dimensionality and communication cost in distributed learning prob...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
We study the problem of distributed mean estimation and optimization under communication constraints...
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 distributed optimization over several devices, each sending incremental model updates to...
We consider the problem of estimating the arithmetic average of a finite collection of real vectors ...
A common approach to statistical learning with big-data is to randomly split it among m machines and...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
Information-theoretic lower bounds on the estimation error are derived for problems of distributed c...
We study the distributed machine learning problem where the n feature-response pairs are partitioned...
In this paper, a distributed stochastic approximation algorithm is studied. Applications of such alg...
In this paper, we use tools from rate-distortion theory to establish new upper bounds on the general...
DoctorIn this dissertation, we study on improving the performance of diffusion least mean square (LMS...
We explore the connection between dimensionality and communication cost in distributed learning prob...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
We study the problem of distributed mean estimation and optimization under communication constraints...
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 distributed optimization over several devices, each sending incremental model updates to...
We consider the problem of estimating the arithmetic average of a finite collection of real vectors ...
A common approach to statistical learning with big-data is to randomly split it among m machines and...
Distributed Mean Estimation (DME) is a central building block in federated learning, where clients s...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
Information-theoretic lower bounds on the estimation error are derived for problems of distributed c...
We study the distributed machine learning problem where the n feature-response pairs are partitioned...
In this paper, a distributed stochastic approximation algorithm is studied. Applications of such alg...
In this paper, we use tools from rate-distortion theory to establish new upper bounds on the general...
DoctorIn this dissertation, we study on improving the performance of diffusion least mean square (LMS...