Min-Max Propagation

Srinivasa, Christopher, Givoni, Inmar, Ravanbakhsh, Siamak, Frey, Brendan J.

Neural Information Processing Systems 

We study the application of min-max propagation, a variation of belief propagation, for approximate min-max inference in factor graphs. We show that for “any” high-order function that can be minimized in O(ω), the min-max message update can be obtained using an efficient O(K(ω + log(K)) procedure, where K is the number of variables. We demonstrate how this generic procedure, in combination with efficient updates for a family of high-order constraints, enables the application of min-max propagation to efficiently approximate the NP-hard problem of makespan minimization, which seeks to distribute a set of tasks on machines, such that the worst case load is minimized.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found