Abstract. We propose a new exhaustive search algorithm for optimiza-tion in discrete graphical models. When pursued to the full search depth (typically intractable), it is guaranteed to converge to a global optimum, passing through a series of monotonously improving local optima that are guaranteed to be optimal within a given and increasing Hamming distance. For a search depth of 1, it specializes to ICM. Between these extremes, a tradeoff between approximation quality and runtime is es-tablished. We show this experimentally by improving approximations for the non-submodular models in the MRF benchmark [1] and Decision Tree Fields [2].
The paper presents and evaluates the power of a new framework for optimization in graphical models, ...
The paper investigates the potential of look-ahead in the con-text of AND/OR search in graphical mod...
The paper investigates the potential of look-ahead in the con-text of AND/OR search in graphical mod...
Abstract. We propose a new exhaustive search algorithm for optimiza-tion in discrete graphical model...
Abstract. This article presents a new search algorithm for the NP-hard problem of optimizing functio...
This article presents a new search algorithm for the NP-hard problem of optimizing functions of bina...
Graphical models are a well-known convenient tool to describe complex interactions between variables...
This dissertation discusses exhaustive search algorithms for discrete optimization problems. The sea...
We consider the problem of optimizing expensive black-box functions over discrete spaces (e.g., sets...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
Graphical models are widely used to model complex interactions between variables. A graphical model ...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
* The work is supported by RFBR, grant 04-01-00858-a.The task of revealing the relationship between ...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
The paper presents and evaluates the power of a new framework for optimization in graphical models, ...
The paper investigates the potential of look-ahead in the con-text of AND/OR search in graphical mod...
The paper investigates the potential of look-ahead in the con-text of AND/OR search in graphical mod...
Abstract. We propose a new exhaustive search algorithm for optimiza-tion in discrete graphical model...
Abstract. This article presents a new search algorithm for the NP-hard problem of optimizing functio...
This article presents a new search algorithm for the NP-hard problem of optimizing functions of bina...
Graphical models are a well-known convenient tool to describe complex interactions between variables...
This dissertation discusses exhaustive search algorithms for discrete optimization problems. The sea...
We consider the problem of optimizing expensive black-box functions over discrete spaces (e.g., sets...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
Graphical models are widely used to model complex interactions between variables. A graphical model ...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
* The work is supported by RFBR, grant 04-01-00858-a.The task of revealing the relationship between ...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
The paper presents and evaluates the power of a new framework for optimization in graphical models, ...
The paper investigates the potential of look-ahead in the con-text of AND/OR search in graphical mod...
The paper investigates the potential of look-ahead in the con-text of AND/OR search in graphical mod...