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PROMISE-SS 2010 : Student Symposium on Predictive Models in Software Engineering (co-located with PROMISE 2010 and ICSM 2010)

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Link: http://promisedata.org/2010/students.shtml
 
When Sep 12, 2010 - Sep 13, 2010
Where Timisoara, Romania
Submission Deadline May 21, 2010
Notification Due Jul 9, 2010
Final Version Due Jul 23, 2010
Categories    software engineering
 

Call For Papers

Student Symposium
The Student Symposium on Predictive Models in Software Engineering (PROMISE-SS) will be co-located with the 6th International Conference on Predictive Models in Software Engineering (PROMISE September 12-13, 2010), and the 26th IEEE International Conference on Software Maintenance (ICSM September 12-18, 2010), which will take place in Timisoara, Romania. The Symposium will take place on the 13th of September, from 2 to 6 pm.
Goal
The main goal of the PROMISE-SS is to provide graduate students with a forum to:

* present their research and be provided useful feedback from the Symposium's committee members, and the audience.
* increase their professional network by having the opportunity to meet more senior researchers and academics conducting research in the student's field of research
* have an opportunity to discuss career options and opportunities with senior researchers and academics
* provide an opportunity for students to also attend PROMISE and ICSM
* provide an opportunity for students to present their research at an International Forum

Scope

The scope of the PROMISE-SS is the same one as that of PROMISE, thus including, but not being limited to, the following topics of interest:

* Effort prediction models
* Defect prediction models
* Meta-analysis and generalizations of predictive models exploring certain questions (e.g., defect prediction)
* Replicated studies contributing to theory building in software engineering
* Predicting various intermediate or final outcomes of interest regarding business, team, human, people, process, and organizational aspects of software engineering, as well as the product aspects
* Privacy and ethical issues in data sharing and predictive modeling
* Qualitative research guiding and informing the process of building future predictive models
* Instance-based models predicting outcomes by examining similarities to earlier experiences
* Industrial experience reports detailing the application of software technologies - processes, methods, or tools - and their effectiveness in industrial settings.
* Tools for software researchers that effectively gather and analyze data to support reproducible and verifiable research.

Submission

We welcome submissions from students who are at an initial as well as at a mature stage of their research. In both instances students will need to submit an abstract of no more than 5 pages, formatted using the same formatting guidelines as those used by PROMISE.

The abstract needs to have at least the following sections:

* TITLE
* SUMMARY (200 words)
* QUESTION: The research problem or question to be answered, with a motivation for its importance.
* RELATED WORK: A summary that critically presents previous and related work to be used to justify the student's research proposal.
* CONTRIBUTION: The expected contribution(s) to the body of knowledge that the research is likely to make.
* PLAN: A research plan detailing how the research question or problem will be answered (includes the research methodology to be used, and how results will be evaluated in order to provide credible evidence).
* RESULTS: A description of the work already conducted, work in progress, and future work.
* LETTER OF RECOMMENDATION: Supervisors' Letter of Recommendation (1 page or less) offering an assessment of the current status of the research.

The format of the paper must follow the ACM guidelines.

Submissions that do not comply with the instructions abovementioned will be rejected without review.

To submit to the symposium, see our submission page.

Note that by submitting an abstract to the PROMISE-SS, the author(s) agree to the following conditions, if their abstract is accepted:

* Submit a final, revised, camera-ready version of the abstract by the deadline specified for camera-ready abstracts,
* At least one author must register for the Doctoral Symposium
* At least one author must attend the Doctoral Symposium to give an oral presentation of their research.

Evaluation
The PROMISE-SS Committee will select submissions using the following criteria:

* The potential contribution of the research detailed
* Research topic in line with the scope of the Doctoral Symposium.
* Quality of the research abstract.
* The stage of the research.

Proceedings

Accepted abstracts will be published in the Proceedings of the PROMISE-SS, to be distributed to all participants of this Symposium. These Proceedings will also be placed on-line at http://promisedata.org/2010.
Important Dates

See here.
Doctoral Symposium Chair

Emilia Mendes, CS Department, The University of Auckland, New Zealand
Program Committee

* Lefteris Angelis
* Jacky Keung
* Tim Menzies
* Maurizio Morisio
* Guenther Ruhe
* Alessando Sarcia
* Burak Turhan
* Stefan Wagner
* Elaine Weyuker
* Hongyu Zhang
* Tom Zimmermann

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