会議情報
ISSTA 2025: International Symposium on Software Testing and Analysis
https://conf.researchr.org/home/ISSTA-2025
提出日:
2024-10-31
通知日:
2024-12-19
会議日:
2025-06-25
場所:
Trondheim, Norway
年:
34
CCF: a   CORE: a   QUALIS: a2   閲覧: 89543   追跡: 100   出席: 13

論文募集
We invite high-quality submissions, from both industry and academia, describing original and unpublished results of theoretical, empirical, conceptual, and experimental research on software testing and analysis.

ISSTA invites three kinds of submissions. The majority of submissions are expected to be “Research Papers”, but submissions that best fit the description of “Experience Papers” or “Replicability Studies” should be submitted as such. A good Experience Paper will include lessons learned or other wisdom synthesised for the community from the reported experience. Replicability Studies shall clearly describe their purpose and value beyond the original result.

NEW THIS YEAR: The conference proceedings will be published in the Proceedings of the ACM on Software Engineering (PACMSE), Issue: ISSTA 2025.

Research Papers

Authors are invited to submit research papers describing original contributions in testing or analysis of computer software. Papers describing original theoretical or empirical research, new techniques, methods for emerging systems, in-depth case studies, infrastructures of testing and analysis, or tools are welcome.

Experience Papers

Authors are invited to submit experience papers describing a significant experience in applying software testing and analysis methods or tools and should carefully identify and discuss important lessons learned so that other researchers and/or practitioners can benefit from the experience.

Replicability Studies

ISSTA would like to encourage researchers to replicate results from previous papers. A replicability study must go beyond simply re-implementing an algorithm and/or re-running the artefacts provided by the original paper. It should at the very least apply the approach to new, significantly broadened inputs. Particularly, replicability studies are encouraged to target techniques that previously were evaluated only on proprietary subject programs or inputs. A replicability study should clearly report on results that the authors were able to replicate as well as on aspects of the work that were not replicable. In the latter case, authors are encouraged to make an effort to communicate or collaborate with the original paper’s authors to determine the cause for any observed discrepancies and, if possible, address them (e.g., through minor implementation changes). We explicitly encourage authors to not focus on a single paper/artefact only, but instead to perform a comparative experiment of multiple related approaches.

Replicability studies should follow the ACM guidelines on replicability (different team, different experimental setup): the measurement can be obtained with stated precision by a different team, a different measuring system, in a different location on multiple trials. For computational experiments, this means that an independent group can obtain the same result using artefacts which they develop completely independently. Moreover, it is generally also insufficient to focus on reproducibility (i.e., different team, same experimental setup) alone. Replicability Studies will be evaluated according to the following standards:

    Depth and breadth of experiments
    Clarity of writing
    Appropriateness of conclusions
    Amount of useful, actionable insights
    Availability of artefacts

We expect replicability studies to clearly point out the artefacts the study is built on, and to submit those artefacts to the artefact evaluation. Artefacts evaluated positively will be eligible to obtain the prestigious Results Reproduced badge.

Major Revisions

Papers submitted to the initial deadline may be accepted, rejected or may receive a chance to submit a major revision of the initial submission to the major revision deadline.
最終更新 Dou Sun 2024-06-30
合格率
時間提出受け入れ受け入れ(%)
20141283628.1%
20131243225.8%
20121083128.7%
20111213528.9%
20101052422.9%
2009932526.9%
20081003535%
20071032221.4%
2006842226.2%
2004932830.1%
2002972626.8%
2000732128.8%
1998471634%
1996692434.8%
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関連仕訳帳
CCF完全な名前インパクト ・ ファクター出版社ISSN
Nano Today13.20Elsevier1748-0132
International Journal of Information Management20.10Elsevier0268-4012
Journal of Computational Neuroscience1.500Springer0929-5313
Diamond and Related Materials4.300Elsevier0925-9635
cIET Information Security1.300IET1751-8709
Discover Applied Sciences2.800Springer3004-9261
Chemometrics and Intelligent Laboratory Systems3.700Elsevier0169-7439
Materials Science and Engineering: R: Reports31.60Elsevier0927-796X
Journal of Computing in Civil Engineering4.700ASCE0887-3801
Journal of Computer Languages1.700Elsevier2665-9182
完全な名前インパクト ・ ファクター出版社
Nano Today13.20Elsevier
International Journal of Information Management20.10Elsevier
Journal of Computational Neuroscience1.500Springer
Diamond and Related Materials4.300Elsevier
IET Information Security1.300IET
Discover Applied Sciences2.800Springer
Chemometrics and Intelligent Laboratory Systems3.700Elsevier
Materials Science and Engineering: R: Reports31.60Elsevier
Journal of Computing in Civil Engineering4.700ASCE
Journal of Computer Languages1.700Elsevier
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