This paper studies distributed algorithms for (strongly convex) composite optimization problems over mesh networks, subject to quantized communications. Instead of focusing on a specific algorithmic design, a black-box model is proposed, casting linearly convergent distributed algorithms in the form of fixed-point iterates. The algorithmic model is equipped with a novel random or deterministic Biased Compression (BC) rule on the quantizer design, and a new Adaptive encoding Nonuniform Quantizer (ANQ) coupled with a communication-efficient encoding scheme, which implements the BC-rule using a finite number of bits (below machine precision). This fills a gap existing in most state-of-the-art quantization schemes, such as those based on the po...
This item was originally submitted by Mehmet Yildiz (mey7@cornell.edu) on 2007-04-30T19:47:25Z. Aft...
This paper is concerned with the distributed averaging problem subject to a quantization constraint...
Distributed optimization increasingly plays a centralrole in economical and sustainable operation of...
In this paper, we study unconstrained distributed optimization strongly convex problems, in which th...
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
In this paper, we consider the unconstrained distributed optimization problem, in which the exchange...
summary:In this paper, we design a distributed penalty ADMM algorithm with quantized communication t...
To address the high communication costs of distributed machine learning, a large body of work has be...
ABSTRACTWe consider distributed optimization over several devices, each sending incremental model up...
summary:In this paper, we focus on an aggregative optimization problem under the communication bottl...
In this paper, we consider decentralized optimization problems where agents have individual cost fun...
The problem of reducing the communication cost in distributed training through gradient quantization...
This paper deals with the distributed averaging problem over a connected network of agents, subject ...
In this paper, we propose a distributed quantized algorithm for solving the network linear equation ...
Abstract: This paper considers multi-agent distributed optimization with quantized communication wh...
This item was originally submitted by Mehmet Yildiz (mey7@cornell.edu) on 2007-04-30T19:47:25Z. Aft...
This paper is concerned with the distributed averaging problem subject to a quantization constraint...
Distributed optimization increasingly plays a centralrole in economical and sustainable operation of...
In this paper, we study unconstrained distributed optimization strongly convex problems, in which th...
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
In this paper, we consider the unconstrained distributed optimization problem, in which the exchange...
summary:In this paper, we design a distributed penalty ADMM algorithm with quantized communication t...
To address the high communication costs of distributed machine learning, a large body of work has be...
ABSTRACTWe consider distributed optimization over several devices, each sending incremental model up...
summary:In this paper, we focus on an aggregative optimization problem under the communication bottl...
In this paper, we consider decentralized optimization problems where agents have individual cost fun...
The problem of reducing the communication cost in distributed training through gradient quantization...
This paper deals with the distributed averaging problem over a connected network of agents, subject ...
In this paper, we propose a distributed quantized algorithm for solving the network linear equation ...
Abstract: This paper considers multi-agent distributed optimization with quantized communication wh...
This item was originally submitted by Mehmet Yildiz (mey7@cornell.edu) on 2007-04-30T19:47:25Z. Aft...
This paper is concerned with the distributed averaging problem subject to a quantization constraint...
Distributed optimization increasingly plays a centralrole in economical and sustainable operation of...