Mini-Bucket Elimination (MBE) is a well-known approximation algorithm deriving lower and upper bounds on quantities of interest over graphical models. It relies on a procedure that partitions a set of functions, called bucket, into smaller subsets, called mini-buckets. The method has been used with a single partitioning heuristic throughout, so the impact of the partitioning algorithm on the quality of the generated bound has never been investigated. This paper addresses this issue by presenting a framework within which partitioning strategies can be described, analyzed and compared. We derive a new class of partitioning heuristics from first-principles geared for likelihood queries, demonstrate their impact on a number of benchmarks for pr...
A promising approach to probabilistic inference that has attracted recent attention exploits its red...
Computing the partition function Z of a discrete graphical model is a fundamental inference challeng...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Mini-Bucket Elimination (MBE) is a well-known approximation algorithm deriving lower and upper bound...
Mini-Bucket Elimination (MBE) is a well-known approximation algorithm deriving lower and upper bound...
Graphical models are one of the most prominent frameworks to model complex systems and efficiently q...
The paper describes a branch and bound scheme that uses heuristics generated mechanically by the min...
The paper addresses the problem of computing lower bounds on the optimal costs associated with eac...
The Constraint Satisfaction framework is quite restricted. Nevertheless, it is this restrictiveness ...
This paper describes a class of probabilistic approximation algorithms based on bucket elimination w...
We investigate a hybrid of two styles of algorithms for deriving bounds for op-timization tasks over...
In numerous real world applications, from sensor networks to computer vision to natural text process...
The paper presents a parameterized approximation scheme for probabilistic inference. The scheme, cal...
The paper presents a parameterized approximation scheme for probabilistic inference. The scheme, ca...
This paper describes a class of probabilistic approximation algorithms based on bucket elimination w...
A promising approach to probabilistic inference that has attracted recent attention exploits its red...
Computing the partition function Z of a discrete graphical model is a fundamental inference challeng...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Mini-Bucket Elimination (MBE) is a well-known approximation algorithm deriving lower and upper bound...
Mini-Bucket Elimination (MBE) is a well-known approximation algorithm deriving lower and upper bound...
Graphical models are one of the most prominent frameworks to model complex systems and efficiently q...
The paper describes a branch and bound scheme that uses heuristics generated mechanically by the min...
The paper addresses the problem of computing lower bounds on the optimal costs associated with eac...
The Constraint Satisfaction framework is quite restricted. Nevertheless, it is this restrictiveness ...
This paper describes a class of probabilistic approximation algorithms based on bucket elimination w...
We investigate a hybrid of two styles of algorithms for deriving bounds for op-timization tasks over...
In numerous real world applications, from sensor networks to computer vision to natural text process...
The paper presents a parameterized approximation scheme for probabilistic inference. The scheme, cal...
The paper presents a parameterized approximation scheme for probabilistic inference. The scheme, ca...
This paper describes a class of probabilistic approximation algorithms based on bucket elimination w...
A promising approach to probabilistic inference that has attracted recent attention exploits its red...
Computing the partition function Z of a discrete graphical model is a fundamental inference challeng...
This thesis considers the problem of performing inference on undirected graphical models with contin...