The junction tree approach, with applications in artificial intelligence, computer vision, machine learning, and statistics, is often used for computing posterior distributions in probabilistic graphical models. One of the key challenges associated with junction trees is computational, and several parallel computing technologies - including many-core processors - have been investigated to meet this challenge. Many-core processors (including GPUs) are now programmable, unfortunately their complexities make it hard to manually tune their parameters in order to optimize software performance. In this paper, we investigate a machine learning approach to minimize the execution time of parallel junction tree algorithms implemented on a GPU. By ca...
We present the first truly polynomial algorithm for PAC-learning the structure of bounded-treewidth ...
In recent years, the advancement in machine learning techniques has greatly improved the perceived q...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
The junction tree approach, with applications in artificial intelligence, computer vision, machine l...
Belief propagation over junction trees is known to be computationally challenging in the general cas...
Compiling Bayesian networks (BNs) to junc-tion trees and performing belief propaga-tion over them is...
Compiling Bayesian networks (BNs) to junc-tion trees and performing belief propaga-tion over them is...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
Belief Propagation (BP) in Junction Trees (JT) is one of the most popular approaches to compute post...
In this work, we present a parallelized version of tiled belief propagation for stereo matching. The...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
Background: Heterogeneous parallel computing systems utilize the combination of different resources ...
Real world data is likely to contain an inherent structure. Those structures may be represented with...
This paper presents a study that discusses how multi-threading can be used to improve the runtime pe...
We examine the problem of optimizing classification tree evaluation for on-line and real-time appli-...
We present the first truly polynomial algorithm for PAC-learning the structure of bounded-treewidth ...
In recent years, the advancement in machine learning techniques has greatly improved the perceived q...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
The junction tree approach, with applications in artificial intelligence, computer vision, machine l...
Belief propagation over junction trees is known to be computationally challenging in the general cas...
Compiling Bayesian networks (BNs) to junc-tion trees and performing belief propaga-tion over them is...
Compiling Bayesian networks (BNs) to junc-tion trees and performing belief propaga-tion over them is...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
Belief Propagation (BP) in Junction Trees (JT) is one of the most popular approaches to compute post...
In this work, we present a parallelized version of tiled belief propagation for stereo matching. The...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
Background: Heterogeneous parallel computing systems utilize the combination of different resources ...
Real world data is likely to contain an inherent structure. Those structures may be represented with...
This paper presents a study that discusses how multi-threading can be used to improve the runtime pe...
We examine the problem of optimizing classification tree evaluation for on-line and real-time appli-...
We present the first truly polynomial algorithm for PAC-learning the structure of bounded-treewidth ...
In recent years, the advancement in machine learning techniques has greatly improved the perceived q...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...