We define the distributed, real-time combinatorial optimization problem. We propose a general, semantically well-defined notion of solution stability in such systems, based on the cost of change from an already implemented solution to the new one. This approach allows maximum flexibility in specifying these costs through the use of stability constraints. We present the first mechanism for combinatorial optimization that guarantees optimal solution stability in dynamic environments, based on this notion of solution stability. In contrast to current approaches which solve sequences of static CSPs, our mechanism has a lot more flexibility by allowing for a much finer-grained vision of time: each variable of interest can be assigned its own com...
This survey presents major results and issues related to the study of NPO problems in dynamic enviro...
We consider constraint optimization problems where costs (or preferences) are all given, but some ar...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
We define the distributed continuous-time combinatorial optimization problem. We propose a new notio...
Scheduling a subset of solvers belonging to a given portfolio has proven to be a good strategy when ...
This paper presents a new distributed constraint optimization algorithm called LSPA, which can be us...
AbstractOur ability to solve large, important combinatorial optimization problems has improved drama...
This work was motivated by the need of exploiting the potential of distributed paralelism in combina...
Copyright © 2014 Duan Peibo et al. This is an open access article distributed under the Creative Com...
Self stabilization in distributed systems is the ability of a system to respond to transient failure...
We study the notion of stability and perturbation resilience introduced by Bilu and Linial (2010) an...
We consider optimization problems with some binary variables, where the objective function is linear...
AbstractThis paper surveys the recent results in stability analysis for discrete optimization proble...
Combinatorial optimization is a way of finding an optimum solution from a finite set of objects. For...
This survey presents major results and issues related to the study of NPO problems in dynamic enviro...
This survey presents major results and issues related to the study of NPO problems in dynamic enviro...
We consider constraint optimization problems where costs (or preferences) are all given, but some ar...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
We define the distributed continuous-time combinatorial optimization problem. We propose a new notio...
Scheduling a subset of solvers belonging to a given portfolio has proven to be a good strategy when ...
This paper presents a new distributed constraint optimization algorithm called LSPA, which can be us...
AbstractOur ability to solve large, important combinatorial optimization problems has improved drama...
This work was motivated by the need of exploiting the potential of distributed paralelism in combina...
Copyright © 2014 Duan Peibo et al. This is an open access article distributed under the Creative Com...
Self stabilization in distributed systems is the ability of a system to respond to transient failure...
We study the notion of stability and perturbation resilience introduced by Bilu and Linial (2010) an...
We consider optimization problems with some binary variables, where the objective function is linear...
AbstractThis paper surveys the recent results in stability analysis for discrete optimization proble...
Combinatorial optimization is a way of finding an optimum solution from a finite set of objects. For...
This survey presents major results and issues related to the study of NPO problems in dynamic enviro...
This survey presents major results and issues related to the study of NPO problems in dynamic enviro...
We consider constraint optimization problems where costs (or preferences) are all given, but some ar...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...