Due to the rapid growth of data and computational resources, distributed optimization has become an active research area in recent years. While first-order methods seem to dominate the field, second-order methods are nevertheless attractive as they potentially require fewer communication rounds to converge. However, there are significant drawbacks that impede their wide adoption, such as the computation and the communication of a large Hessian matrix. In this paper we present a new algorithm for distributed training of generalized linear models that only requires the computation of diagonal blocks of the Hessian matrix on the individual workers. To deal with this approximate information we propose an adaptive approach that - akin to trust-r...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Distributed learning provides an attractive framework for scaling the learning task by sharing the c...
Distributed learning refers to the problem of inferring a function when the training data are distri...
In this paper, we introduce the trust region concept for distributed optimization. A large class of ...
The first part of this dissertation considers distributed learning problems over networked agents. T...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
We consider distributed multitask learning problems over a network of agents where each agent is int...
This paper considers optimization problems over networks where agents have individual objectives to ...
This dissertation deals with the development of effective information processing strategies for dist...
This work develops an effective distributed algorithm for the solution of stochastic optimization pr...
Matrix-parametrized models, including multiclass logistic regression and sparse coding, are used in ...
The presented work studies an application of a technique known as a semismooth Newton (SSN) method t...
Distributed convex optimization refers to the task of minimizing the aggregate sum of convex risk fu...
Distributed stochastic optimization methods based on Newton's method offer significant advantages ov...
Adaptive networks are suitable for decentralized inference tasks. Recent works have intensively stud...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Distributed learning provides an attractive framework for scaling the learning task by sharing the c...
Distributed learning refers to the problem of inferring a function when the training data are distri...
In this paper, we introduce the trust region concept for distributed optimization. A large class of ...
The first part of this dissertation considers distributed learning problems over networked agents. T...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
We consider distributed multitask learning problems over a network of agents where each agent is int...
This paper considers optimization problems over networks where agents have individual objectives to ...
This dissertation deals with the development of effective information processing strategies for dist...
This work develops an effective distributed algorithm for the solution of stochastic optimization pr...
Matrix-parametrized models, including multiclass logistic regression and sparse coding, are used in ...
The presented work studies an application of a technique known as a semismooth Newton (SSN) method t...
Distributed convex optimization refers to the task of minimizing the aggregate sum of convex risk fu...
Distributed stochastic optimization methods based on Newton's method offer significant advantages ov...
Adaptive networks are suitable for decentralized inference tasks. Recent works have intensively stud...
Adopting centralized optimization approaches in order to solve optimization problem arising from ana...
Distributed learning provides an attractive framework for scaling the learning task by sharing the c...
Distributed learning refers to the problem of inferring a function when the training data are distri...