Conference Papers Year : 2016

A Model-Driven Approach to Generate Relevant and Realistic Datasets

Abstract

Disposing of relevant and realistic datasets is a difficult challenge in many areas, for benchmarking or testing purpose. Datasets may contain complexly structured data such as graphs or models, and obtaining such kind of data is sometimes expensive and available benchmarks are not as relevant as they should be. In this paper we propose a model-driven approach based on a probabilistic simulation using domain specific metrics for automated generation of relevant and realistic datasets.
Fichier principal
Vignette du fichier
seke16paper_29.pdf (154.63 Ko) Télécharger le fichier
Origin Publisher files allowed on an open archive
Loading...

Dates and versions

lirmm-01397311 , version 1 (15-11-2016)

Identifiers

Cite

Adel Ferdjoukh, Eric Bourreau, Annie Chateau, Clémentine Nebut. A Model-Driven Approach to Generate Relevant and Realistic Datasets. SEKE: Software Engineering and Knowledge Engineering, Jul 2016, Redwood City, San Francisco Bay, United States. pp.105-109, ⟨10.18293/SEKE2016-029⟩. ⟨lirmm-01397311⟩
194 View
287 Download

Altmetric

Share

More