We study the parameterized complexity of classical problems that arise in the profiling of relational data. Namely, we characterize the complexity of detecting unique column combinations (candidate keys), functional dependencies, and inclusion dependencies with the solution size as parameter. While the discovery of uniques and functional dependencies, respectively, turns out to be W[2]-complete, the detection of inclusion dependencies is one of the first natural problems proven to be complete for the class W[3]. As a side effect, our reductions give insights into the complexity of enumerating all minimal unique column combinations or functional dependencies
We introduce the problem of discovering functional determinacies that result from "rolling up&q...
It is well known that for a fixed relational database query φ in m free variables, it can be determi...
The reliable fraction of information is an attractive score for quantifying (functional) dependencie...
Abstract. This study develops the foundation for a simple, yet ecient method for uncovering function...
This study develops the foundation for a simple, yet efficient method for uncovering functional and ...
AbstractThe dependency inference problem is to find a cover for the set of functional dependencies t...
Data Mining (DM) represents the process of extracting interesting and previously unknown knowledge f...
Determining relationships such as functional or inclusion dependencies within and across databases i...
AbstractPractical database applications give the impression that sets of constraints are rather smal...
International audienceIn this paper, we propose a new efficient algorithm called Dep-Miner for disco...
In this dissertation, we study the dirty data evaluation and repairing problem in relational databas...
Relational database schemas must be semantically enriched to reflect knowledge about the data, as ne...
International audienceForeign keys form one of the most fundamental constraints for relational datab...
In this paper, we investigate the parameterized complexity of model checking for Dependence Logic wh...
Relational database schemas must be semantically enriched to reflect knowledge about the data, as ne...
We introduce the problem of discovering functional determinacies that result from "rolling up&q...
It is well known that for a fixed relational database query φ in m free variables, it can be determi...
The reliable fraction of information is an attractive score for quantifying (functional) dependencie...
Abstract. This study develops the foundation for a simple, yet ecient method for uncovering function...
This study develops the foundation for a simple, yet efficient method for uncovering functional and ...
AbstractThe dependency inference problem is to find a cover for the set of functional dependencies t...
Data Mining (DM) represents the process of extracting interesting and previously unknown knowledge f...
Determining relationships such as functional or inclusion dependencies within and across databases i...
AbstractPractical database applications give the impression that sets of constraints are rather smal...
International audienceIn this paper, we propose a new efficient algorithm called Dep-Miner for disco...
In this dissertation, we study the dirty data evaluation and repairing problem in relational databas...
Relational database schemas must be semantically enriched to reflect knowledge about the data, as ne...
International audienceForeign keys form one of the most fundamental constraints for relational datab...
In this paper, we investigate the parameterized complexity of model checking for Dependence Logic wh...
Relational database schemas must be semantically enriched to reflect knowledge about the data, as ne...
We introduce the problem of discovering functional determinacies that result from "rolling up&q...
It is well known that for a fixed relational database query φ in m free variables, it can be determi...
The reliable fraction of information is an attractive score for quantifying (functional) dependencie...