1076 articles – 553 references  [version française]
HAL: hal-00765545, version 1

See detailed view  BibTeX,EndNote,...
ICDT, Berlin : Allemagne (2012)
Finding optimal probabilistic generators for XML collections
Serge Abiteboul 1, Yael Amsterdamer 2, Daniel Deutch 1, Tova Milo 3, Pierre Senellart 4
(2012)

We study the problem of, given a corpus of XML documents and its schema, finding an optimal (generative) probabilistic model, where optimality here means maximizing the like- lihood of the particular corpus to be generated. Focusing first on the structure of documents, we present an efficient algorithm for finding the best generative probabilistic model, in the absence of constraints. We further study the problem in the presence of integrity constraints, namely key, inclusion, and domain constraints. We study in this case two different kinds of generators. First, we consider a continuation-test generator that performs, while generating documents, tests of schema satisfiability; these tests prevent from generating a document violating the constraints but, as we will see, they are computationally expensive. We also study a restart generator that may generate an invalid document and, when this is the case, restarts and tries again. Finally, we consider the injection of data values into the structure, to obtain a full XML document. We study different approaches for generating these values.
1:  Laboratoire Spécification et Vérification [Cachan] (LSV)
CNRS : UMR8643 – INRIA – École normale supérieure de Cachan - ENS Cachan
2:  Télécom ParisTech
Institut Mines-Télécom
3:  Tel Aviv University
4:  Institut Télécom - Télécom ParisTech
Télécom ParisTech
Computer Science/Databases
Attached file list to this document: 
PDF
abiteboul2012finding.pdf(494.7 KB)