ISBN 978-3-662-62385-5International audienceRelational query optimisers rely on cost models to choose between different query execution plans. Selectivity estimates are known to be a crucial input to the cost model. In practice, standard selectivity estimation procedures are prone to large errors. This is mostly because they rely on the so-called attribute value independence and join uniformity assumptions. Therefore, multidimensional methods have been proposed to capture dependencies between two or more attributes both within and across relations. However, these methods require a large computational cost which makes them unusable in practice. We propose a method based on Bayesian networks that is able to capture cross-relation attribute va...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Effective techniques for eliciting user preferences have taken on added importance as recommender sy...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
The efficiency of a query execution plan depends on the accuracy of the selectivity estimates given ...
Selectivity estimation refers to the ability of the SQL query optimizer to estimate the size of the ...
Databases, and in particular relational databases, are a common paradigm for storing and querying da...
The selectivity factor of relational operations is a critical parameter for determining the cost fun...
A model selection score measures how well a model fits a dataset. We describe a new method for exten...
We compare the performance of sampling-based procedures for estimating the selectivity of a join. Wh...
This paper focuses on selectivity estimation for SPARQL graph patterns, which is crucial to RDF quer...
A fundamental problem related to RDF query processing is selectivity estimation, which is crucial to...
AbstractWe compare the performance of sampling-based procedures for estimating the selectivity of a ...
In this paper, we propose a novel approach for estimating the record selectivities of database queri...
Sensor networks and other distributed information systems (such as the Web) must frequently access d...
This thesis explores and compares different methods of optimizing queries in Bayesian networks. Baye...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Effective techniques for eliciting user preferences have taken on added importance as recommender sy...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
The efficiency of a query execution plan depends on the accuracy of the selectivity estimates given ...
Selectivity estimation refers to the ability of the SQL query optimizer to estimate the size of the ...
Databases, and in particular relational databases, are a common paradigm for storing and querying da...
The selectivity factor of relational operations is a critical parameter for determining the cost fun...
A model selection score measures how well a model fits a dataset. We describe a new method for exten...
We compare the performance of sampling-based procedures for estimating the selectivity of a join. Wh...
This paper focuses on selectivity estimation for SPARQL graph patterns, which is crucial to RDF quer...
A fundamental problem related to RDF query processing is selectivity estimation, which is crucial to...
AbstractWe compare the performance of sampling-based procedures for estimating the selectivity of a ...
In this paper, we propose a novel approach for estimating the record selectivities of database queri...
Sensor networks and other distributed information systems (such as the Web) must frequently access d...
This thesis explores and compares different methods of optimizing queries in Bayesian networks. Baye...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Effective techniques for eliciting user preferences have taken on added importance as recommender sy...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...