posted on 2010-12-01, 00:00authored byAndre F.T. Martins, Noah A. Smith, Eric P Xing, Pedro M.Q. Aguiar, Mario A. T. Figueiredo
In this paper, we propose combining augmented Lagrangian optimization with the dual decomposition method to obtain a fast algorithm for approximate MAP (maximum a posteriori) inference on factor graphs. We also show how the proposed algorithm can efficiently handle problems with (possibly global) structural constraints. The experimental results reported testify for the state-of-the-art performance of the proposed approach.