Quality Classifiers for Open Source Software Repositories
Abstract
Open Source Software (OSS) often relies on large repositories, like SourceForge, for initial incubation. The OSS repositories offer a large variety of meta-data providing interesting information about projects and their success. In this paper we propose a data mining approach for training classifiers on the OSS meta-data provided by such data repositories. The classifiers learn to predict the successful continuation of an OSS project. The `successfulness' of projects is defined in terms of the classifier confidence with which it predicts that they could be ported in popular OSS projects (such as FreeBSD, Gentoo Portage).
Cite
@article{arxiv.0904.4708,
title = {Quality Classifiers for Open Source Software Repositories},
author = {George Tsatsaronis and Maria Halkidi and Emmanouel A. Giakoumakis},
journal= {arXiv preprint arXiv:0904.4708},
year = {2009}
}
Comments
10 pages, 2 Tables, 7 equations, 13 references. Appeared in 2nd Artificial Intelligence Techniques in Software Engineering Workshop, AIAI 2009