(1 + ε)-approximate sparse recovery
Eric Price, David P. Woodruff
FOCS 2011
We consider a two-stage supply chain with a production facility that replenishes a single product at retailers. The objective is to locate distribution centers in the network such that the sum of facility location, pipeline inventory, and safety stock costs is minimized. We explicitly model the relationship between the flows in the network, lead times, and safety stock levels. We use genetic algorithms to solve the model and compare their performance to that of a Lagrangian heuristic developed in earlier work. A novel chromosome representation that combines binary vectors with random keys provides solutions of similar quality to those from the Lagrangian heuristic. The model is then extended to incorporate arbitrary demand variance at the retailers. This modification destroys the structure upon which the Lagrangian heuristic is based, but is easily incorporated into the genetic algorithm. The genetic algorithm yields significantly better solutions than a greedy heuristic for this modification and has reasonable computational requirements. © 2008 Elsevier B.V. All rights reserved.
Eric Price, David P. Woodruff
FOCS 2011
Limin Hu
IEEE/ACM Transactions on Networking
Beomseok Nam, Henrique Andrade, et al.
ACM/IEEE SC 2006
S. Sattanathan, N.C. Narendra, et al.
CONTEXT 2005