We propose a new approach for distributed optimization based on an emerging area of theoretical computer science -- local computation algorithms. The approach is fundamentally different from existing methodologies and provides a number of benefits, such as robustness to link failure and adaptivity in dynamic settings. Specifically, we develop an algorithm, LOCO, that given a convex optimization problem P with n variables and a "sparse" linear constraint matrix with m constraints, provably finds a solution as good as that of the best online algorithm for P using only O(log(n+m)) messages with high probability. The approach is not iterative and communication is restricted to a localized neighborhood. In addition to analytic results, we show n...
<p>This thesis is concerned with the design of distributed algorithms for solving optimization probl...
We consider a distributed optimization problem where n nodes, Sl, l ∈ {1,..., n}, wish to minimize a...
In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed...
We propose a new approach for distributed optimization based on an emerging area of theoretical comp...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
In this paper we investigate how standard nonlinear programming algorithms can be used to solve cons...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
We consider algorithms for distributed optimization and their applications. In this thesis, we propo...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
In this paper we introduce two discrete-time, distributed optimization algorithms executed by a set ...
This thesis considers optimization problems defined over a network of nodes, where each node knows o...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
<p>This thesis is concerned with the design of distributed algorithms for solving optimization probl...
We consider a distributed optimization problem where n nodes, Sl, l ∈ {1,..., n}, wish to minimize a...
In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed...
We propose a new approach for distributed optimization based on an emerging area of theoretical comp...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
In this paper we investigate how standard nonlinear programming algorithms can be used to solve cons...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
We consider algorithms for distributed optimization and their applications. In this thesis, we propo...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
In this paper we introduce two discrete-time, distributed optimization algorithms executed by a set ...
This thesis considers optimization problems defined over a network of nodes, where each node knows o...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
<p>This thesis is concerned with the design of distributed algorithms for solving optimization probl...
We consider a distributed optimization problem where n nodes, Sl, l ∈ {1,..., n}, wish to minimize a...
In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed...