| openaire: EC/H2020/871042/EU//SoBigData-PlusPlusBayesian networks are popular probabilistic models that capture the conditional dependencies among a set of variables. Inference in Bayesian networks is a fundamental task for answering probabilistic queries over a subset of variables in the data. However, exact inference in Bayesian networks is NP-hard, which has prompted the development of many practical inference methods. In this paper, we focus on improving the performance of the junction-tree algorithm, a well-known method for exact inference in Bayesian networks. In particular, we seek to leverage information in the workload of probabilistic queries to obtain an optimal workload-aware materialization of junction trees, with the aim to ...
AbstractThis article describes an algorithm that solves the problem of finding the K most probable c...
AbstractIn this paper we present a junction tree based inference architecture exploiting the structu...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
Bayesian networks are popular probabilistic models that capture the conditional dependencies among a...
| openaire: EC/H2020/871042/EU//SoBigData-PlusPlusBayesian networks are general, well-studied probab...
This thesis explores and compares different methods of optimizing queries in Bayesian networks. Baye...
Abstract In this paper we present a junction tree based inference architecture exploiting the struct...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
Many researches have been done for efficient computation of probabilistic queries posed to Bayesian ...
We present the first truly polynomial algorithm for PAC-learning the structure of bounded-treewidth ...
The efficiency of algorithms using secondary structures for probabilistic inference in Bayesian netw...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
With the increased availability of data for complex domains, it is desirable to learn Bayesian netwo...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
AbstractThis article describes an algorithm that solves the problem of finding the K most probable c...
AbstractIn this paper we present a junction tree based inference architecture exploiting the structu...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
Bayesian networks are popular probabilistic models that capture the conditional dependencies among a...
| openaire: EC/H2020/871042/EU//SoBigData-PlusPlusBayesian networks are general, well-studied probab...
This thesis explores and compares different methods of optimizing queries in Bayesian networks. Baye...
Abstract In this paper we present a junction tree based inference architecture exploiting the struct...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
Many researches have been done for efficient computation of probabilistic queries posed to Bayesian ...
We present the first truly polynomial algorithm for PAC-learning the structure of bounded-treewidth ...
The efficiency of algorithms using secondary structures for probabilistic inference in Bayesian netw...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
With the increased availability of data for complex domains, it is desirable to learn Bayesian netwo...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
AbstractThis article describes an algorithm that solves the problem of finding the K most probable c...
AbstractIn this paper we present a junction tree based inference architecture exploiting the structu...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...