We propose a new fast algorithm for approximate MAP inference on factor graphs, which combines augmented Lagrangian optimization with the dual decomposition method. Each slave subproblem is given a quadratic penalty, which pushes toward faster consensus than in previous subgradient approaches. Our algorithm is provably convergent, parallelizable, and suitable for fine decompositions of the graph. We show how it can efficiently handle problems with (possibly global) structural constraints via simple sort operations. Experiments on synthetic and real-world data show that our approach compares favorably with the state-of-the-art.</p
We study the MAP-labeling problem for graphical mod-els by optimizing a dual problem obtained by Lag...
We study the MAP-labeling problem for graphical mod-els by optimizing a dual problem obtained by Lag...
Approximate inference by decomposition of discrete graphical models and Lagrangian relaxation has be...
Approximate MAP inference in graphical models is an important and challenging problem for many domai...
Abstract. We present a novel dual decomposition approach to MAP inference with highly connected disc...
We present AD³, a new algorithm for approximate maximum a posteriori (MAP) inference on factor graph...
<p>We present AD<sup>3</sup>, a new algorithm for approximate <em>maximum a posteriori</em> (MAP) in...
We present AD3, a new algorithm for approximate maximum a posteriori (MAP) inference on factor graph...
Approximate MAP inference in graphical models is an important and challenging prob-lem for many doma...
<p>We propose AD<sup>3</sup> , a new algorithm for approximate maximum a posteriori (MAP) inference ...
Maximum a posteriori (MAP) inference is one of the fundamental inference tasks in graphical models. ...
Approximate MAP inference in graphical models is an important and challenging prob-lem for many doma...
We consider the MAP-inference problem for graphical models, which is a valued constraint satisfactio...
Graphical models have become a central paradigm for knowledge representation and rea- soning over mo...
We consider the MAP-inference problem for graphical models,which is a valued constraint satisfaction...
We study the MAP-labeling problem for graphical mod-els by optimizing a dual problem obtained by Lag...
We study the MAP-labeling problem for graphical mod-els by optimizing a dual problem obtained by Lag...
Approximate inference by decomposition of discrete graphical models and Lagrangian relaxation has be...
Approximate MAP inference in graphical models is an important and challenging problem for many domai...
Abstract. We present a novel dual decomposition approach to MAP inference with highly connected disc...
We present AD³, a new algorithm for approximate maximum a posteriori (MAP) inference on factor graph...
<p>We present AD<sup>3</sup>, a new algorithm for approximate <em>maximum a posteriori</em> (MAP) in...
We present AD3, a new algorithm for approximate maximum a posteriori (MAP) inference on factor graph...
Approximate MAP inference in graphical models is an important and challenging prob-lem for many doma...
<p>We propose AD<sup>3</sup> , a new algorithm for approximate maximum a posteriori (MAP) inference ...
Maximum a posteriori (MAP) inference is one of the fundamental inference tasks in graphical models. ...
Approximate MAP inference in graphical models is an important and challenging prob-lem for many doma...
We consider the MAP-inference problem for graphical models, which is a valued constraint satisfactio...
Graphical models have become a central paradigm for knowledge representation and rea- soning over mo...
We consider the MAP-inference problem for graphical models,which is a valued constraint satisfaction...
We study the MAP-labeling problem for graphical mod-els by optimizing a dual problem obtained by Lag...
We study the MAP-labeling problem for graphical mod-els by optimizing a dual problem obtained by Lag...
Approximate inference by decomposition of discrete graphical models and Lagrangian relaxation has be...