Probabilistic algorithms are computationally intensive approximate methods for solving intractable problems. Probabilistic algorithms are excellent candidates for cluster computations because they require little communication and synchronization. It is possible to specify a common parallel control structure as a generic algorithm for probabilistic cluster computations. Such a generic parallel algorithm can be glued together with domain-specific sequential algorithms in order to derive approximate parallel solutions for different intractable problems. In this paper we propose a generic algorithm for probabilistic computations on a cluster of workstations. We use this generic algorithm to derive specific parallel algorithms for two discrete o...
Ouvrage (auteur).This book presents a large variety of applications of probability theory and statis...
International audienceWe tackle the feasibility and efficiency of two new parallel algorithms that s...
Classical model-based partitional clustering algorithms, such ask-means or mixture of Gaussians, pro...
Probabilistic algorithms are computationally intensive approximate methods for solving intractable p...
Probabilistic inference in belief networks is a promising technique for diagnosis, forecasting and d...
We propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e., randomize...
We present a technique for converting RNC algorithms into NC algorithms. Our approach is based on a ...
In this paper, we present three different methods for implementing the Probabilistic Neural Network ...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
As technology progresses, the processors used for statistical computation are not getting faster: th...
International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algor...
A method of parallelizing the process of solving the traveling salesman problem is suggested, where ...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
Ouvrage (auteur).This book presents a large variety of applications of probability theory and statis...
International audienceWe tackle the feasibility and efficiency of two new parallel algorithms that s...
Classical model-based partitional clustering algorithms, such ask-means or mixture of Gaussians, pro...
Probabilistic algorithms are computationally intensive approximate methods for solving intractable p...
Probabilistic inference in belief networks is a promising technique for diagnosis, forecasting and d...
We propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e., randomize...
We present a technique for converting RNC algorithms into NC algorithms. Our approach is based on a ...
In this paper, we present three different methods for implementing the Probabilistic Neural Network ...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
As technology progresses, the processors used for statistical computation are not getting faster: th...
International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algor...
A method of parallelizing the process of solving the traveling salesman problem is suggested, where ...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
Ouvrage (auteur).This book presents a large variety of applications of probability theory and statis...
International audienceWe tackle the feasibility and efficiency of two new parallel algorithms that s...
Classical model-based partitional clustering algorithms, such ask-means or mixture of Gaussians, pro...