posted by organizer: ausdm2023 || 1069 views || tracked by 1 users: [display]

AusDM 2023 : Australasian Data Science and Machine Learning Conference


When Dec 11, 2023 - Dec 13, 2023
Where Auckland, New Zealand
Abstract Registration Due Aug 18, 2023
Submission Deadline Aug 25, 2023
Notification Due Sep 24, 2023
Final Version Due Oct 8, 2023
Categories    data mining   machine learning   artificial intelligence

Call For Papers

The Australasian Data Science and Machine Learning Conference (AusDM), formerly known as 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.

Since AusDM’02, the conference has showcased research in data mining, providing a forum for presenting and discussing the latest research and developments. Built on this tradition, AusDM’23 will facilitate the cross-disciplinary exchange of ideas, experience and potential research directions. Specifically, the conference seeks to showcase: Research Prototypes; Industry Case Studies; Practical Analytics Technology; and Research Student Projects. AusDM’23 will be a meeting place for pushing forward the frontiers of data science and machine learning in academia and industry.

AusDM’23 will deliver keynote speeches, invited talks, full paper presentations, abstracts, tutorials, workshops, social events, etc.

Keydates (Timezone: AoE)
Abstract submission: 18 Aug 23
Paper submission: 25 Aug 23
Paper notification: 24 Sept 23
Camera-ready: 8 Oct 23
Author Registration: 8 Oct 23
Conference: 11-13 Dec 23

Publication and Topics
We are calling for papers, both research and applications, and from both academia and industry, for publication and presentation at the conference. All papers will go through double-blind, peer–review by a panel of international experts. The AusDM 2023 proceedings will be published by Springer Communications in Computer and Information Science (CCIS) and become available immediately after the conference. Please note that AusDM’23 requires that at least one author for each accepted paper register for the conference and present their work for the paper to be published in the proceeding.

AusDM’23 invites contributions addressing current research in data mining and knowledge discovery as well as experiences, novel applications and future challenges.

General topics of interest include, but are not restricted to:

Big Data Analytics
Biomedical and Health Data Mining
Computational Aspects of Data Mining
Data Integration, Matching and Linkage
Data Mining in Security and Surveillance
Data Preparation, Cleaning and Preprocessing
Data Stream Mining
Deep Learning
Machine Learning Safety
Evaluation of Results and their Communication

AusDM’23 specially invites contributions for the following special topics:
Ethics and Society: Societal implications of data science and machine learning, fairness, interpretability, transparency, trustworthiness, human-in-the-loop machine learning, climate change and sustainability
Generative modelling: multimodal ML, ML for coding, ML for drug discovery / molecular tasks,
Interdisciplinary applications of ML/data science: in social sciences, urban planning, medicine, humanities, social good, etc.

Keynote Speakers
As is tradition for AusDM we have lined up an excellent keynote speaker program. Each speaker is a well-known researcher and/or practitioner in data mining and related disciplines. The keynote program provides an opportunity to hear from some of the world’s leaders on what the technology offers and where it is heading.

We invite three types of submissions for AusDM’23:

Research Track: Academic submissions reporting on new algorithms, novel approaches and research progress, with a paper length of between 8 and 15 pages in Springer CCIS style, as detailed below.
Application Track: Submissions reporting on applications of data mining and machine learning and describing specific data mining implementations and experiences in the real world. Submissions in this category can be between 6 and 15 pages in Springer CCIS style, as detailed below.
Industry Showcase Track: Submissions from governments and industry on an analytics solution that has raised profits, reduced costs and/or achieved other important policy and/or business outcomes can be made in this track. Submissions to this category should be a 1-page extended abstract. Note that this track is presentation only, without publication in conference proceedings. For publication of your papers, please submit them to the above Application Track.
All submissions, except for the Industry Showcase Track, will go through a double-blind review process, i.e. paper submissions must NOT include authors names or affiliations or acknowledgments referring to funding bodies. Self-citing references should also be removed from the submitted papers for the double-blinded reviewing purpose. The information can be added in the accepted final camera-ready submissions.

All submissions are required to follow the format specified for papers in the Springer Communications in Computer and Information Science (CCIS) style. Authors should consult Springer’s authors’ guidelines and use the proceeding templates, either in LaTeX or Word, for the preparation of their papers. The electronic submission must be in PDF only and made through the AusDM Submission page. Springer encourages authors to include their ORCIDs in their papers. In addition, the corresponding author of each paper, acting on behalf of all the authors of the paper, must complete and sign a Consent to Publish form, through which the copyright for their paper is transferred to Springer.

All submitted papers must not be previously published or accepted for publication anywhere. They must not be submitted to any other conference or journal during the review process of AusDM’23. We would like to draw the authors’ attention to Springer’s Editorial Policies and Code of Conduct (available as a PDF here).

The link to previous AusDM proceedings on SpringerLink is available here.

A selected number of best papers will be invited for possible inclusion, in an expanded and revised form, in the Data Science and Engineering, Scimago Q1 journal published by Springer.

Special Sessions
To celebrate the first time of AusDM in New Zealand, this year we have lined-up a set of special topics to facilitate sharing and learning of the latest research advances in data science and machine learning areas of high relevance for today’s society. These sessions are chaired by recognised experts in the field. We strongly encourage submissions in these areas (please see research-track submission guidelines here):

Ethics and Society (Chair: Dr Amanda J. Williamson, Generative AI Lead, Deloitte New Zealand / Senior Lecturer, University of Waikato): Societal implications of data science and machine learning, fairness, interpretability, transparency, trustworthiness, human-in-the-loop machine learning, climate change and sustainability.
Generative modelling (Chair: Dr Jiamou Liu, Senior Lecturer, The University of Auckland): including multimodal ML, ML for coding, ML for drug discovery / molecular tasks, and generative models in general.

Interdisciplinary applications of ML/data science (Chair: Dr Mingming Gong, Senior Lecturer, The University of Melbourne): applications in social sciences, urban planning, medicine, humanities, social good, etc.

Organizing Committee
Steering Committee Chairs
Simeon Simoff (Western Sydney University)
Graham Williams (The Australian National University)

General Chairs
Yun Sing Koh (University of Auckland)
Annette Slunjski (IAPA)

PC Chairs – Research
Diana Benavides Prado (University of Auckland)
Sarah Monazam Erfani (University of Melbourne)

PC Chairs – Application
Philippe Fournier-Viger (Shenzhen University)

Tutorial and Workshop Chair
Andrew Lensen (Victoria University of Wellington)

Publication Chair
Yee Ling Boo (RMIT University)

Sponsorship Chair
Annelies Tjetjep (Data & Analytics, PwC)

Doctoral Symposium Chair
Di Zhao (University of Auckland)
Asara Senaratne (The Australian National University)

Diversity, Equity, and Inclusion Chair
Richi Nayak (Queensland University of Technology)

Web Chair
Bowen Chen (University of Auckland)

Publicity Chair
Nick Lim (University of Waikato)

Related Resources

DSIT 2024   2024 7th International Conference on Data Science and Information Technology (DSIT 2024)
Ei/Scopus-AACIP 2024   2024 2nd Asia Conference on Algorithms, Computing and Image Processing (AACIP 2024)-EI Compendex
AMLDS 2025   2025 International Conference on Advanced Machine Learning and Data Science
Ei/Scopus-ACAI 2024   2024 7th International Conference on Algorithms, Computing and Artificial Intelligence(ACAI 2024)
AAAI 2025   The 39th Annual AAAI Conference on Artificial Intelligence
IEEE-Ei/Scopus-SGGEA 2024   2024 Asia Conference on Smart Grid, Green Energy and Applications (SGGEA 2024) -EI Compendex
EI/Scopus-PRDM 2024   2024 5th International Conference on Pattern Recognition and Data Mining(PRDM 2024)
AASDS 2024   Special Issue on Applications and Analysis of Statistics and Data Science
KDD 2025   31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining
Ei/Scopus- DMCSE 2024   2024 International Conference on Data Mining, Computing and Software Engineering (DMCSE 2024)