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AUSDM 2022 : The 20th Australasian Data Mining Conference 2022 Call for Doctoral Consortium

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Link: https://ausdm22.ausdm.org/index.html%3Fp=4104.html
 
When Dec 12, 2022 - Dec 16, 2022
Where Western Sydney Australia
Submission Deadline Aug 5, 2022
Notification Due Sep 23, 2022
Categories    doctoral consortium   data mining
 

Call For Papers

We are celebrating the 20th anniversary of AusDM, and we have an exciting
line-up to celebrate this milestone. We would encourage early researchers
to join our AusDM Festival. The conference is planned to be an in-person
event in western Sydney. Participants from Australia and New Zealand are
encouraged to attend it personally. There will be an option for
overseas participants
to attend it virtually.

The Australasian Data Mining Conference has established itself as the
premier Australasian meeting for both practitioners and researchers in data
mining. It is devoted to the art and science of intelligent analysis of
(usually big) data sets for meaningful (and previously unknown) insights.
This conference will enable the sharing and learning of research and
progress in the local context and breakthroughs in data mining algorithms
and their applications across all industries.

The doctoral consortium (DC) of AusDM 2022 is aimed at providing Ph.D.
students with the opportunity to receive feedback on their research (from
established researchers in their fields); interact closely with other
researchers and Ph.D. students. The doctoral consortium will be held on the
same day as the industry and government, and special session days. Apart
from extra feedback, we hope to provide students with new contacts and
professional networking opportunities.

All accepted submissions will be given the opportunity to present their
work as a poster. Small selected submissions will be provided with an
opportunity to present their work as an oral presentation. The DC is
intended for Ph.D. students at any stage of their studies. However,
well-motivated
Masters (Research) applications will also be considered.


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Important Dates
----------------------
Submission Deadline: 5 Aug 22
Author Notification: 23 Sep 22
Author Registration: 7 Oct 22
Conference: 12-16 Dec 22


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Submission Procedure
------------------------------
- Cover letter: the student’s name, email address, homepage, university
affiliation, Ph.D.
start date, expected graduation date, name and email of Ph.D.
supervisor/s.
- Letter of support from the supervisor.
- A 2-page (short) CV that includes the list of publications of the
student.
- A 2-page summary of the student’s thesis or thesis topic. The summary
can include
sub-sections such as introduction, literature review, methodology,
results and discussions.

The electronic submission must be in PDF only and made through the AusDM
Easychair link.
Doctoral students who submit to the DC are encouraged to submit papers to
the main conference.

For any questions, please contact ausdm22@ausdm.org

AusDM’22 website: https://ausdm22.ausdm.org
Twitter: https://twitter.com/AusDm2022
LinkedIn: https://www.linkedin.com/groups/4907891/
Facebook: https://www.facebook.com/ausdm2022conference

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